{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# 导入模块"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "import numpy as np \n",
    "import pandas as pd\n",
    "import matplotlib.pyplot as plt\n",
    "import matplotlib.pylab as mpl\n",
    "import os "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 绝对路径和相对路径\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "file_name = '/Users/gavinsun/Writings/gitee.com/didi/1810/案例泰坦尼克数据分析/titanic_train.csv'\n",
    "# file_name = '../案例泰坦尼克数据分析/titanic_train.csv'"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 泰坦尼克号案例"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 设置中文字体"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "mpl.rcParams['font.sans-serif']=['Songti SC']"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 读取数据\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {},
   "outputs": [],
   "source": [
    "df = pd.read_csv(file_name)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 说明:jupyter是基于iPython的,iPhone樱桃红是交互式的,所以jupyter也是交互式的"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
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       "      <td>S</td>\n",
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       "    <tr>\n",
       "      <th>862</th>\n",
       "      <td>863</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Swift, Mrs. Frederick Joel (Margaret Welles Ba...</td>\n",
       "      <td>female</td>\n",
       "      <td>48.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>17466</td>\n",
       "      <td>25.9292</td>\n",
       "      <td>D17</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>863</th>\n",
       "      <td>864</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Miss. Dorothy Edith \"Dolly\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>864</th>\n",
       "      <td>865</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>Gill, Mr. John William</td>\n",
       "      <td>male</td>\n",
       "      <td>24.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>233866</td>\n",
       "      <td>13.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>865</th>\n",
       "      <td>866</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>Bystrom, Mrs. (Karolina)</td>\n",
       "      <td>female</td>\n",
       "      <td>42.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>236852</td>\n",
       "      <td>13.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>866</th>\n",
       "      <td>867</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>Duran y More, Miss. Asuncion</td>\n",
       "      <td>female</td>\n",
       "      <td>27.0</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>SC/PARIS 2149</td>\n",
       "      <td>13.8583</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>867</th>\n",
       "      <td>868</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Roebling, Mr. Washington Augustus II</td>\n",
       "      <td>male</td>\n",
       "      <td>31.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>PC 17590</td>\n",
       "      <td>50.4958</td>\n",
       "      <td>A24</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>868</th>\n",
       "      <td>869</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>van Melkebeke, Mr. Philemon</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>345777</td>\n",
       "      <td>9.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>869</th>\n",
       "      <td>870</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnson, Master. Harold Theodor</td>\n",
       "      <td>male</td>\n",
       "      <td>4.0</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>347742</td>\n",
       "      <td>11.1333</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>870</th>\n",
       "      <td>871</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Balkic, Mr. Cerin</td>\n",
       "      <td>male</td>\n",
       "      <td>26.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349248</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>871</th>\n",
       "      <td>872</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Beckwith, Mrs. Richard Leonard (Sallie Monypeny)</td>\n",
       "      <td>female</td>\n",
       "      <td>47.0</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>11751</td>\n",
       "      <td>52.5542</td>\n",
       "      <td>D35</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>872</th>\n",
       "      <td>873</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Carlsson, Mr. Frans Olof</td>\n",
       "      <td>male</td>\n",
       "      <td>33.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>695</td>\n",
       "      <td>5.0000</td>\n",
       "      <td>B51 B53 B55</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>873</th>\n",
       "      <td>874</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Vander Cruyssen, Mr. Victor</td>\n",
       "      <td>male</td>\n",
       "      <td>47.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>345765</td>\n",
       "      <td>9.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>874</th>\n",
       "      <td>875</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>Abelson, Mrs. Samuel (Hannah Wizosky)</td>\n",
       "      <td>female</td>\n",
       "      <td>28.0</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>P/PP 3381</td>\n",
       "      <td>24.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>875</th>\n",
       "      <td>876</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Najib, Miss. Adele Kiamie \"Jane\"</td>\n",
       "      <td>female</td>\n",
       "      <td>15.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2667</td>\n",
       "      <td>7.2250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>876</th>\n",
       "      <td>877</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Gustafsson, Mr. Alfred Ossian</td>\n",
       "      <td>male</td>\n",
       "      <td>20.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>7534</td>\n",
       "      <td>9.8458</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>877</th>\n",
       "      <td>878</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Petroff, Mr. Nedelio</td>\n",
       "      <td>male</td>\n",
       "      <td>19.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349212</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>878</th>\n",
       "      <td>879</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Laleff, Mr. Kristo</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349217</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>879</th>\n",
       "      <td>880</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Potter, Mrs. Thomas Jr (Lily Alexenia Wilson)</td>\n",
       "      <td>female</td>\n",
       "      <td>56.0</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>11767</td>\n",
       "      <td>83.1583</td>\n",
       "      <td>C50</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>880</th>\n",
       "      <td>881</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>Shelley, Mrs. William (Imanita Parrish Hall)</td>\n",
       "      <td>female</td>\n",
       "      <td>25.0</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>230433</td>\n",
       "      <td>26.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>881</th>\n",
       "      <td>882</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Markun, Mr. Johann</td>\n",
       "      <td>male</td>\n",
       "      <td>33.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349257</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>882</th>\n",
       "      <td>883</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Dahlberg, Miss. Gerda Ulrika</td>\n",
       "      <td>female</td>\n",
       "      <td>22.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>7552</td>\n",
       "      <td>10.5167</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>883</th>\n",
       "      <td>884</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>Banfield, Mr. Frederick James</td>\n",
       "      <td>male</td>\n",
       "      <td>28.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>C.A./SOTON 34068</td>\n",
       "      <td>10.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>884</th>\n",
       "      <td>885</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sutehall, Mr. Henry Jr</td>\n",
       "      <td>male</td>\n",
       "      <td>25.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>SOTON/OQ 392076</td>\n",
       "      <td>7.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>885</th>\n",
       "      <td>886</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Rice, Mrs. William (Margaret Norton)</td>\n",
       "      <td>female</td>\n",
       "      <td>39.0</td>\n",
       "      <td>0</td>\n",
       "      <td>5</td>\n",
       "      <td>382652</td>\n",
       "      <td>29.1250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>886</th>\n",
       "      <td>887</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>Montvila, Rev. Juozas</td>\n",
       "      <td>male</td>\n",
       "      <td>27.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>211536</td>\n",
       "      <td>13.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>887</th>\n",
       "      <td>888</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Graham, Miss. Margaret Edith</td>\n",
       "      <td>female</td>\n",
       "      <td>19.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>112053</td>\n",
       "      <td>30.0000</td>\n",
       "      <td>B42</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>888</th>\n",
       "      <td>889</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnston, Miss. Catherine Helen \"Carrie\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>W./C. 6607</td>\n",
       "      <td>23.4500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>889</th>\n",
       "      <td>890</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Behr, Mr. Karl Howell</td>\n",
       "      <td>male</td>\n",
       "      <td>26.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>111369</td>\n",
       "      <td>30.0000</td>\n",
       "      <td>C148</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>890</th>\n",
       "      <td>891</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Dooley, Mr. Patrick</td>\n",
       "      <td>male</td>\n",
       "      <td>32.0</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>370376</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "<p>891 rows × 12 columns</p>\n",
       "</div>"
      ],
      "text/plain": [
       "     PassengerId  Survived  Pclass  \\\n",
       "0              1         0       3   \n",
       "1              2         1       1   \n",
       "2              3         1       3   \n",
       "3              4         1       1   \n",
       "4              5         0       3   \n",
       "5              6         0       3   \n",
       "6              7         0       1   \n",
       "7              8         0       3   \n",
       "8              9         1       3   \n",
       "9             10         1       2   \n",
       "10            11         1       3   \n",
       "11            12         1       1   \n",
       "12            13         0       3   \n",
       "13            14         0       3   \n",
       "14            15         0       3   \n",
       "15            16         1       2   \n",
       "16            17         0       3   \n",
       "17            18         1       2   \n",
       "18            19         0       3   \n",
       "19            20         1       3   \n",
       "20            21         0       2   \n",
       "21            22         1       2   \n",
       "22            23         1       3   \n",
       "23            24         1       1   \n",
       "24            25         0       3   \n",
       "25            26         1       3   \n",
       "26            27         0       3   \n",
       "27            28         0       1   \n",
       "28            29         1       3   \n",
       "29            30         0       3   \n",
       "..           ...       ...     ...   \n",
       "861          862         0       2   \n",
       "862          863         1       1   \n",
       "863          864         0       3   \n",
       "864          865         0       2   \n",
       "865          866         1       2   \n",
       "866          867         1       2   \n",
       "867          868         0       1   \n",
       "868          869         0       3   \n",
       "869          870         1       3   \n",
       "870          871         0       3   \n",
       "871          872         1       1   \n",
       "872          873         0       1   \n",
       "873          874         0       3   \n",
       "874          875         1       2   \n",
       "875          876         1       3   \n",
       "876          877         0       3   \n",
       "877          878         0       3   \n",
       "878          879         0       3   \n",
       "879          880         1       1   \n",
       "880          881         1       2   \n",
       "881          882         0       3   \n",
       "882          883         0       3   \n",
       "883          884         0       2   \n",
       "884          885         0       3   \n",
       "885          886         0       3   \n",
       "886          887         0       2   \n",
       "887          888         1       1   \n",
       "888          889         0       3   \n",
       "889          890         1       1   \n",
       "890          891         0       3   \n",
       "\n",
       "                                                  Name     Sex   Age  SibSp  \\\n",
       "0                              Braund, Mr. Owen Harris    male  22.0      1   \n",
       "1    Cumings, Mrs. John Bradley (Florence Briggs Th...  female  38.0      1   \n",
       "2                               Heikkinen, Miss. Laina  female  26.0      0   \n",
       "3         Futrelle, Mrs. Jacques Heath (Lily May Peel)  female  35.0      1   \n",
       "4                             Allen, Mr. William Henry    male  35.0      0   \n",
       "5                                     Moran, Mr. James    male   NaN      0   \n",
       "6                              McCarthy, Mr. Timothy J    male  54.0      0   \n",
       "7                       Palsson, Master. Gosta Leonard    male   2.0      3   \n",
       "8    Johnson, Mrs. Oscar W (Elisabeth Vilhelmina Berg)  female  27.0      0   \n",
       "9                  Nasser, Mrs. Nicholas (Adele Achem)  female  14.0      1   \n",
       "10                     Sandstrom, Miss. Marguerite Rut  female   4.0      1   \n",
       "11                            Bonnell, Miss. Elizabeth  female  58.0      0   \n",
       "12                      Saundercock, Mr. William Henry    male  20.0      0   \n",
       "13                         Andersson, Mr. Anders Johan    male  39.0      1   \n",
       "14                Vestrom, Miss. Hulda Amanda Adolfina  female  14.0      0   \n",
       "15                    Hewlett, Mrs. (Mary D Kingcome)   female  55.0      0   \n",
       "16                                Rice, Master. Eugene    male   2.0      4   \n",
       "17                        Williams, Mr. Charles Eugene    male   NaN      0   \n",
       "18   Vander Planke, Mrs. Julius (Emelia Maria Vande...  female  31.0      1   \n",
       "19                             Masselmani, Mrs. Fatima  female   NaN      0   \n",
       "20                                Fynney, Mr. Joseph J    male  35.0      0   \n",
       "21                               Beesley, Mr. Lawrence    male  34.0      0   \n",
       "22                         McGowan, Miss. Anna \"Annie\"  female  15.0      0   \n",
       "23                        Sloper, Mr. William Thompson    male  28.0      0   \n",
       "24                       Palsson, Miss. Torborg Danira  female   8.0      3   \n",
       "25   Asplund, Mrs. Carl Oscar (Selma Augusta Emilia...  female  38.0      1   \n",
       "26                             Emir, Mr. Farred Chehab    male   NaN      0   \n",
       "27                      Fortune, Mr. Charles Alexander    male  19.0      3   \n",
       "28                       O'Dwyer, Miss. Ellen \"Nellie\"  female   NaN      0   \n",
       "29                                 Todoroff, Mr. Lalio    male   NaN      0   \n",
       "..                                                 ...     ...   ...    ...   \n",
       "861                        Giles, Mr. Frederick Edward    male  21.0      1   \n",
       "862  Swift, Mrs. Frederick Joel (Margaret Welles Ba...  female  48.0      0   \n",
       "863                  Sage, Miss. Dorothy Edith \"Dolly\"  female   NaN      8   \n",
       "864                             Gill, Mr. John William    male  24.0      0   \n",
       "865                           Bystrom, Mrs. (Karolina)  female  42.0      0   \n",
       "866                       Duran y More, Miss. Asuncion  female  27.0      1   \n",
       "867               Roebling, Mr. Washington Augustus II    male  31.0      0   \n",
       "868                        van Melkebeke, Mr. Philemon    male   NaN      0   \n",
       "869                    Johnson, Master. Harold Theodor    male   4.0      1   \n",
       "870                                  Balkic, Mr. Cerin    male  26.0      0   \n",
       "871   Beckwith, Mrs. Richard Leonard (Sallie Monypeny)  female  47.0      1   \n",
       "872                           Carlsson, Mr. Frans Olof    male  33.0      0   \n",
       "873                        Vander Cruyssen, Mr. Victor    male  47.0      0   \n",
       "874              Abelson, Mrs. Samuel (Hannah Wizosky)  female  28.0      1   \n",
       "875                   Najib, Miss. Adele Kiamie \"Jane\"  female  15.0      0   \n",
       "876                      Gustafsson, Mr. Alfred Ossian    male  20.0      0   \n",
       "877                               Petroff, Mr. Nedelio    male  19.0      0   \n",
       "878                                 Laleff, Mr. Kristo    male   NaN      0   \n",
       "879      Potter, Mrs. Thomas Jr (Lily Alexenia Wilson)  female  56.0      0   \n",
       "880       Shelley, Mrs. William (Imanita Parrish Hall)  female  25.0      0   \n",
       "881                                 Markun, Mr. Johann    male  33.0      0   \n",
       "882                       Dahlberg, Miss. Gerda Ulrika  female  22.0      0   \n",
       "883                      Banfield, Mr. Frederick James    male  28.0      0   \n",
       "884                             Sutehall, Mr. Henry Jr    male  25.0      0   \n",
       "885               Rice, Mrs. William (Margaret Norton)  female  39.0      0   \n",
       "886                              Montvila, Rev. Juozas    male  27.0      0   \n",
       "887                       Graham, Miss. Margaret Edith  female  19.0      0   \n",
       "888           Johnston, Miss. Catherine Helen \"Carrie\"  female   NaN      1   \n",
       "889                              Behr, Mr. Karl Howell    male  26.0      0   \n",
       "890                                Dooley, Mr. Patrick    male  32.0      0   \n",
       "\n",
       "     Parch            Ticket      Fare        Cabin Embarked  \n",
       "0        0         A/5 21171    7.2500          NaN        S  \n",
       "1        0          PC 17599   71.2833          C85        C  \n",
       "2        0  STON/O2. 3101282    7.9250          NaN        S  \n",
       "3        0            113803   53.1000         C123        S  \n",
       "4        0            373450    8.0500          NaN        S  \n",
       "5        0            330877    8.4583          NaN        Q  \n",
       "6        0             17463   51.8625          E46        S  \n",
       "7        1            349909   21.0750          NaN        S  \n",
       "8        2            347742   11.1333          NaN        S  \n",
       "9        0            237736   30.0708          NaN        C  \n",
       "10       1           PP 9549   16.7000           G6        S  \n",
       "11       0            113783   26.5500         C103        S  \n",
       "12       0         A/5. 2151    8.0500          NaN        S  \n",
       "13       5            347082   31.2750          NaN        S  \n",
       "14       0            350406    7.8542          NaN        S  \n",
       "15       0            248706   16.0000          NaN        S  \n",
       "16       1            382652   29.1250          NaN        Q  \n",
       "17       0            244373   13.0000          NaN        S  \n",
       "18       0            345763   18.0000          NaN        S  \n",
       "19       0              2649    7.2250          NaN        C  \n",
       "20       0            239865   26.0000          NaN        S  \n",
       "21       0            248698   13.0000          D56        S  \n",
       "22       0            330923    8.0292          NaN        Q  \n",
       "23       0            113788   35.5000           A6        S  \n",
       "24       1            349909   21.0750          NaN        S  \n",
       "25       5            347077   31.3875          NaN        S  \n",
       "26       0              2631    7.2250          NaN        C  \n",
       "27       2             19950  263.0000  C23 C25 C27        S  \n",
       "28       0            330959    7.8792          NaN        Q  \n",
       "29       0            349216    7.8958          NaN        S  \n",
       "..     ...               ...       ...          ...      ...  \n",
       "861      0             28134   11.5000          NaN        S  \n",
       "862      0             17466   25.9292          D17        S  \n",
       "863      2          CA. 2343   69.5500          NaN        S  \n",
       "864      0            233866   13.0000          NaN        S  \n",
       "865      0            236852   13.0000          NaN        S  \n",
       "866      0     SC/PARIS 2149   13.8583          NaN        C  \n",
       "867      0          PC 17590   50.4958          A24        S  \n",
       "868      0            345777    9.5000          NaN        S  \n",
       "869      1            347742   11.1333          NaN        S  \n",
       "870      0            349248    7.8958          NaN        S  \n",
       "871      1             11751   52.5542          D35        S  \n",
       "872      0               695    5.0000  B51 B53 B55        S  \n",
       "873      0            345765    9.0000          NaN        S  \n",
       "874      0         P/PP 3381   24.0000          NaN        C  \n",
       "875      0              2667    7.2250          NaN        C  \n",
       "876      0              7534    9.8458          NaN        S  \n",
       "877      0            349212    7.8958          NaN        S  \n",
       "878      0            349217    7.8958          NaN        S  \n",
       "879      1             11767   83.1583          C50        C  \n",
       "880      1            230433   26.0000          NaN        S  \n",
       "881      0            349257    7.8958          NaN        S  \n",
       "882      0              7552   10.5167          NaN        S  \n",
       "883      0  C.A./SOTON 34068   10.5000          NaN        S  \n",
       "884      0   SOTON/OQ 392076    7.0500          NaN        S  \n",
       "885      5            382652   29.1250          NaN        Q  \n",
       "886      0            211536   13.0000          NaN        S  \n",
       "887      0            112053   30.0000          B42        S  \n",
       "888      2        W./C. 6607   23.4500          NaN        S  \n",
       "889      0            111369   30.0000         C148        C  \n",
       "890      0            370376    7.7500          NaN        Q  \n",
       "\n",
       "[891 rows x 12 columns]"
      ]
     },
     "execution_count": 5,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 分组查询\n",
    "统计每个年龄有多少人"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<bound method IndexOpsMixin.value_counts of 0      22.0\n",
       "1      38.0\n",
       "2      26.0\n",
       "3      35.0\n",
       "4      35.0\n",
       "5       NaN\n",
       "6      54.0\n",
       "7       2.0\n",
       "8      27.0\n",
       "9      14.0\n",
       "10      4.0\n",
       "11     58.0\n",
       "12     20.0\n",
       "13     39.0\n",
       "14     14.0\n",
       "15     55.0\n",
       "16      2.0\n",
       "17      NaN\n",
       "18     31.0\n",
       "19      NaN\n",
       "20     35.0\n",
       "21     34.0\n",
       "22     15.0\n",
       "23     28.0\n",
       "24      8.0\n",
       "25     38.0\n",
       "26      NaN\n",
       "27     19.0\n",
       "28      NaN\n",
       "29      NaN\n",
       "       ... \n",
       "861    21.0\n",
       "862    48.0\n",
       "863     NaN\n",
       "864    24.0\n",
       "865    42.0\n",
       "866    27.0\n",
       "867    31.0\n",
       "868     NaN\n",
       "869     4.0\n",
       "870    26.0\n",
       "871    47.0\n",
       "872    33.0\n",
       "873    47.0\n",
       "874    28.0\n",
       "875    15.0\n",
       "876    20.0\n",
       "877    19.0\n",
       "878     NaN\n",
       "879    56.0\n",
       "880    25.0\n",
       "881    33.0\n",
       "882    22.0\n",
       "883    28.0\n",
       "884    25.0\n",
       "885    39.0\n",
       "886    27.0\n",
       "887    19.0\n",
       "888     NaN\n",
       "889    26.0\n",
       "890    32.0\n",
       "Name: Age, Length: 891, dtype: float64>"
      ]
     },
     "execution_count": 6,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df['Age'].value_counts"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    " select count(age) from table_name group by 'Age'"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "891"
      ]
     },
     "execution_count": 7,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df['Age'].size"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
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       " 'rmul',\n",
       " 'rolling',\n",
       " 'round',\n",
       " 'rpow',\n",
       " 'rsub',\n",
       " 'rtruediv',\n",
       " 'sample',\n",
       " 'searchsorted',\n",
       " 'select',\n",
       " 'sem',\n",
       " 'set_axis',\n",
       " 'shape',\n",
       " 'shift',\n",
       " 'size',\n",
       " 'skew',\n",
       " 'slice_shift',\n",
       " 'sort_index',\n",
       " 'sort_values',\n",
       " 'squeeze',\n",
       " 'std',\n",
       " 'strides',\n",
       " 'sub',\n",
       " 'subtract',\n",
       " 'sum',\n",
       " 'swapaxes',\n",
       " 'swaplevel',\n",
       " 'tail',\n",
       " 'take',\n",
       " 'timetuple',\n",
       " 'to_clipboard',\n",
       " 'to_csv',\n",
       " 'to_dense',\n",
       " 'to_dict',\n",
       " 'to_excel',\n",
       " 'to_frame',\n",
       " 'to_hdf',\n",
       " 'to_json',\n",
       " 'to_latex',\n",
       " 'to_list',\n",
       " 'to_msgpack',\n",
       " 'to_numpy',\n",
       " 'to_period',\n",
       " 'to_pickle',\n",
       " 'to_sparse',\n",
       " 'to_sql',\n",
       " 'to_string',\n",
       " 'to_timestamp',\n",
       " 'to_xarray',\n",
       " 'transform',\n",
       " 'transpose',\n",
       " 'truediv',\n",
       " 'truncate',\n",
       " 'tshift',\n",
       " 'tz_convert',\n",
       " 'tz_localize',\n",
       " 'unique',\n",
       " 'unstack',\n",
       " 'update',\n",
       " 'value_counts',\n",
       " 'values',\n",
       " 'var',\n",
       " 'view',\n",
       " 'where',\n",
       " 'xs']"
      ]
     },
     "execution_count": 8,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "dir(df['Age'])"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "pandas.core.series.Series"
      ]
     },
     "execution_count": 9,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "type(df['Age'])"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### df['Age'] 获得的是列维'Age'的Series对象\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "pandas.core.frame.DataFrame"
      ]
     },
     "execution_count": 10,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "type(df)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Help on Series in module pandas.core.series object:\n",
      "\n",
      "class Series(pandas.core.base.IndexOpsMixin, pandas.core.generic.NDFrame)\n",
      " |  One-dimensional ndarray with axis labels (including time series).\n",
      " |  \n",
      " |  Labels need not be unique but must be a hashable type. The object\n",
      " |  supports both integer- and label-based indexing and provides a host of\n",
      " |  methods for performing operations involving the index. Statistical\n",
      " |  methods from ndarray have been overridden to automatically exclude\n",
      " |  missing data (currently represented as NaN).\n",
      " |  \n",
      " |  Operations between Series (+, -, /, *, **) align values based on their\n",
      " |  associated index values-- they need not be the same length. The result\n",
      " |  index will be the sorted union of the two indexes.\n",
      " |  \n",
      " |  Parameters\n",
      " |  ----------\n",
      " |  data : array-like, Iterable, dict, or scalar value\n",
      " |      Contains data stored in Series.\n",
      " |  \n",
      " |      .. versionchanged :: 0.23.0\n",
      " |         If data is a dict, argument order is maintained for Python 3.6\n",
      " |         and later.\n",
      " |  \n",
      " |  index : array-like or Index (1d)\n",
      " |      Values must be hashable and have the same length as `data`.\n",
      " |      Non-unique index values are allowed. Will default to\n",
      " |      RangeIndex (0, 1, 2, ..., n) if not provided. If both a dict and index\n",
      " |      sequence are used, the index will override the keys found in the\n",
      " |      dict.\n",
      " |  dtype : str, numpy.dtype, or ExtensionDtype, optional\n",
      " |      dtype for the output Series. If not specified, this will be\n",
      " |      inferred from `data`.\n",
      " |      See the :ref:`user guide <basics.dtypes>` for more usages.\n",
      " |  copy : bool, default False\n",
      " |      Copy input data.\n",
      " |  \n",
      " |  Method resolution order:\n",
      " |      Series\n",
      " |      pandas.core.base.IndexOpsMixin\n",
      " |      pandas.core.generic.NDFrame\n",
      " |      pandas.core.base.PandasObject\n",
      " |      pandas.core.base.StringMixin\n",
      " |      pandas.core.accessor.DirNamesMixin\n",
      " |      pandas.core.base.SelectionMixin\n",
      " |      builtins.object\n",
      " |  \n",
      " |  Methods defined here:\n",
      " |  \n",
      " |  __add__(left, right)\n",
      " |  \n",
      " |  __and__(self, other)\n",
      " |  \n",
      " |  __array__(self, dtype=None)\n",
      " |      Return the values as a NumPy array.\n",
      " |      \n",
      " |      Users should not call this directly. Rather, it is invoked by\n",
      " |      :func:`numpy.array` and :func:`numpy.asarray`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dtype : str or numpy.dtype, optional\n",
      " |          The dtype to use for the resulting NumPy array. By default,\n",
      " |          the dtype is inferred from the data.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      numpy.ndarray\n",
      " |          The values in the series converted to a :class:`numpy.ndarary`\n",
      " |          with the specified `dtype`.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      pandas.array : Create a new array from data.\n",
      " |      Series.array : Zero-copy view to the array backing the Series.\n",
      " |      Series.to_numpy : Series method for similar behavior.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> ser = pd.Series([1, 2, 3])\n",
      " |      >>> np.asarray(ser)\n",
      " |      array([1, 2, 3])\n",
      " |      \n",
      " |      For timezone-aware data, the timezones may be retained with\n",
      " |      ``dtype='object'``\n",
      " |      \n",
      " |      >>> tzser = pd.Series(pd.date_range('2000', periods=2, tz=\"CET\"))\n",
      " |      >>> np.asarray(tzser, dtype=\"object\")\n",
      " |      array([Timestamp('2000-01-01 00:00:00+0100', tz='CET', freq='D'),\n",
      " |             Timestamp('2000-01-02 00:00:00+0100', tz='CET', freq='D')],\n",
      " |            dtype=object)\n",
      " |      \n",
      " |      Or the values may be localized to UTC and the tzinfo discared with\n",
      " |      ``dtype='datetime64[ns]'``\n",
      " |      \n",
      " |      >>> np.asarray(tzser, dtype=\"datetime64[ns]\")  # doctest: +ELLIPSIS\n",
      " |      array(['1999-12-31T23:00:00.000000000', ...],\n",
      " |            dtype='datetime64[ns]')\n",
      " |  \n",
      " |  __array_prepare__(self, result, context=None)\n",
      " |      Gets called prior to a ufunc.\n",
      " |  \n",
      " |  __array_wrap__(self, result, context=None)\n",
      " |      Gets called after a ufunc.\n",
      " |  \n",
      " |  __div__ = __truediv__(left, right)\n",
      " |  \n",
      " |  __divmod__(left, right)\n",
      " |  \n",
      " |  __eq__(self, other, axis=None)\n",
      " |  \n",
      " |  __float__(self)\n",
      " |  \n",
      " |  __floordiv__(left, right)\n",
      " |  \n",
      " |  __ge__(self, other, axis=None)\n",
      " |  \n",
      " |  __getitem__(self, key)\n",
      " |  \n",
      " |  __gt__(self, other, axis=None)\n",
      " |  \n",
      " |  __iadd__(self, other)\n",
      " |  \n",
      " |  __iand__(self, other)\n",
      " |  \n",
      " |  __ifloordiv__(self, other)\n",
      " |  \n",
      " |  __imod__(self, other)\n",
      " |  \n",
      " |  __imul__(self, other)\n",
      " |  \n",
      " |  __init__(self, data=None, index=None, dtype=None, name=None, copy=False, fastpath=False)\n",
      " |      Initialize self.  See help(type(self)) for accurate signature.\n",
      " |  \n",
      " |  __int__(self)\n",
      " |  \n",
      " |  __ior__(self, other)\n",
      " |  \n",
      " |  __ipow__(self, other)\n",
      " |  \n",
      " |  __isub__(self, other)\n",
      " |  \n",
      " |  __itruediv__(self, other)\n",
      " |  \n",
      " |  __ixor__(self, other)\n",
      " |  \n",
      " |  __le__(self, other, axis=None)\n",
      " |  \n",
      " |  __len__(self)\n",
      " |      Return the length of the Series.\n",
      " |  \n",
      " |  __long__ = __int__(self)\n",
      " |  \n",
      " |  __lt__(self, other, axis=None)\n",
      " |  \n",
      " |  __matmul__(self, other)\n",
      " |      Matrix multiplication using binary `@` operator in Python>=3.5.\n",
      " |  \n",
      " |  __mod__(left, right)\n",
      " |  \n",
      " |  __mul__(left, right)\n",
      " |  \n",
      " |  __ne__(self, other, axis=None)\n",
      " |  \n",
      " |  __or__(self, other)\n",
      " |  \n",
      " |  __pow__(left, right)\n",
      " |  \n",
      " |  __radd__(left, right)\n",
      " |  \n",
      " |  __rand__(self, other)\n",
      " |  \n",
      " |  __rdiv__ = __rtruediv__(left, right)\n",
      " |  \n",
      " |  __rdivmod__(left, right)\n",
      " |  \n",
      " |  __rfloordiv__(left, right)\n",
      " |  \n",
      " |  __rmatmul__(self, other)\n",
      " |      Matrix multiplication using binary `@` operator in Python>=3.5.\n",
      " |  \n",
      " |  __rmod__(left, right)\n",
      " |  \n",
      " |  __rmul__(left, right)\n",
      " |  \n",
      " |  __ror__(self, other)\n",
      " |  \n",
      " |  __rpow__(left, right)\n",
      " |  \n",
      " |  __rsub__(left, right)\n",
      " |  \n",
      " |  __rtruediv__(left, right)\n",
      " |  \n",
      " |  __rxor__(self, other)\n",
      " |  \n",
      " |  __setitem__(self, key, value)\n",
      " |  \n",
      " |  __sub__(left, right)\n",
      " |  \n",
      " |  __truediv__(left, right)\n",
      " |  \n",
      " |  __unicode__(self)\n",
      " |      Return a string representation for a particular DataFrame.\n",
      " |      \n",
      " |      Invoked by unicode(df) in py2 only. Yields a Unicode String in both\n",
      " |      py2/py3.\n",
      " |  \n",
      " |  __xor__(self, other)\n",
      " |  \n",
      " |  add(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Addition of series and other, element-wise (binary operator `add`).\n",
      " |      \n",
      " |      Equivalent to ``series + other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.radd\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  agg = aggregate(self, func, axis=0, *args, **kwargs)\n",
      " |  \n",
      " |  aggregate(self, func, axis=0, *args, **kwargs)\n",
      " |      Aggregate using one or more operations over the specified axis.\n",
      " |      \n",
      " |      .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      func : function, str, list or dict\n",
      " |          Function to use for aggregating the data. If a function, must either\n",
      " |          work when passed a Series or when passed to Series.apply.\n",
      " |      \n",
      " |          Accepted combinations are:\n",
      " |      \n",
      " |          - function\n",
      " |          - string function name\n",
      " |          - list of functions and/or function names, e.g. ``[np.sum, 'mean']``\n",
      " |          - dict of axis labels -> functions, function names or list of such.\n",
      " |      axis : {0 or 'index'}\n",
      " |              Parameter needed for compatibility with DataFrame.\n",
      " |      *args\n",
      " |          Positional arguments to pass to `func`.\n",
      " |      **kwargs\n",
      " |          Keyword arguments to pass to `func`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      DataFrame, Series or scalar\n",
      " |          if DataFrame.agg is called with a single function, returns a Series\n",
      " |          if DataFrame.agg is called with several functions, returns a DataFrame\n",
      " |          if Series.agg is called with single function, returns a scalar\n",
      " |          if Series.agg is called with several functions, returns a Series\n",
      " |      \n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.apply : Invoke function on a Series.\n",
      " |      Series.transform : Transform function producing a Series with like indexes.\n",
      " |      \n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      `agg` is an alias for `aggregate`. Use the alias.\n",
      " |      \n",
      " |      A passed user-defined-function will be passed a Series for evaluation.\n",
      " |      \n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.agg('min')\n",
      " |      1\n",
      " |      \n",
      " |      >>> s.agg(['min', 'max'])\n",
      " |      min   1\n",
      " |      max   4\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  align(self, other, join='outer', axis=None, level=None, copy=True, fill_value=None, method=None, limit=None, fill_axis=0, broadcast_axis=None)\n",
      " |      Align two objects on their axes with the\n",
      " |      specified join method for each axis Index.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : DataFrame or Series\n",
      " |      join : {'outer', 'inner', 'left', 'right'}, default 'outer'\n",
      " |      axis : allowed axis of the other object, default None\n",
      " |          Align on index (0), columns (1), or both (None)\n",
      " |      level : int or level name, default None\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      copy : boolean, default True\n",
      " |          Always returns new objects. If copy=False and no reindexing is\n",
      " |          required then original objects are returned.\n",
      " |      fill_value : scalar, default np.NaN\n",
      " |          Value to use for missing values. Defaults to NaN, but can be any\n",
      " |          \"compatible\" value\n",
      " |      method : {'backfill', 'bfill', 'pad', 'ffill', None}, default None\n",
      " |          Method to use for filling holes in reindexed Series\n",
      " |          pad / ffill: propagate last valid observation forward to next valid\n",
      " |          backfill / bfill: use NEXT valid observation to fill gap\n",
      " |      limit : int, default None\n",
      " |          If method is specified, this is the maximum number of consecutive\n",
      " |          NaN values to forward/backward fill. In other words, if there is\n",
      " |          a gap with more than this number of consecutive NaNs, it will only\n",
      " |          be partially filled. If method is not specified, this is the\n",
      " |          maximum number of entries along the entire axis where NaNs will be\n",
      " |          filled. Must be greater than 0 if not None.\n",
      " |      fill_axis : {0 or 'index'}, default 0\n",
      " |          Filling axis, method and limit\n",
      " |      broadcast_axis : {0 or 'index'}, default None\n",
      " |          Broadcast values along this axis, if aligning two objects of\n",
      " |          different dimensions\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      (left, right) : (Series, type of other)\n",
      " |          Aligned objects\n",
      " |  \n",
      " |  all(self, axis=0, bool_only=None, skipna=True, level=None, **kwargs)\n",
      " |      Return whether all elements are True, potentially over an axis.\n",
      " |      \n",
      " |      Returns True unless there at least one element within a series or\n",
      " |      along a Dataframe axis that is False or equivalent (e.g. zero or\n",
      " |      empty).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default 0\n",
      " |          Indicate which axis or axes should be reduced.\n",
      " |      \n",
      " |          * 0 / 'index' : reduce the index, return a Series whose index is the\n",
      " |            original column labels.\n",
      " |          * 1 / 'columns' : reduce the columns, return a Series whose index is the\n",
      " |            original index.\n",
      " |          * None : reduce all axes, return a scalar.\n",
      " |      \n",
      " |      bool_only : bool, default None\n",
      " |          Include only boolean columns. If None, will attempt to use everything,\n",
      " |          then use only boolean data. Not implemented for Series.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values. If the entire row/column is NA and skipna is\n",
      " |          True, then the result will be True, as for an empty row/column.\n",
      " |          If skipna is False, then NA are treated as True, because these are not\n",
      " |          equal to zero.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      **kwargs : any, default None\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      scalar or Series\n",
      " |          If level is specified, then, Series is returned; otherwise, scalar\n",
      " |          is returned.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.all : Return True if all elements are True.\n",
      " |      DataFrame.any : Return True if one (or more) elements are True.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> pd.Series([True, True]).all()\n",
      " |      True\n",
      " |      >>> pd.Series([True, False]).all()\n",
      " |      False\n",
      " |      >>> pd.Series([]).all()\n",
      " |      True\n",
      " |      >>> pd.Series([np.nan]).all()\n",
      " |      True\n",
      " |      >>> pd.Series([np.nan]).all(skipna=False)\n",
      " |      True\n",
      " |      \n",
      " |      **DataFrames**\n",
      " |      \n",
      " |      Create a dataframe from a dictionary.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'col1': [True, True], 'col2': [True, False]})\n",
      " |      >>> df\n",
      " |         col1   col2\n",
      " |      0  True   True\n",
      " |      1  True  False\n",
      " |      \n",
      " |      Default behaviour checks if column-wise values all return True.\n",
      " |      \n",
      " |      >>> df.all()\n",
      " |      col1     True\n",
      " |      col2    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      Specify ``axis='columns'`` to check if row-wise values all return True.\n",
      " |      \n",
      " |      >>> df.all(axis='columns')\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      Or ``axis=None`` for whether every value is True.\n",
      " |      \n",
      " |      >>> df.all(axis=None)\n",
      " |      False\n",
      " |  \n",
      " |  any(self, axis=0, bool_only=None, skipna=True, level=None, **kwargs)\n",
      " |      Return whether any element is True, potentially over an axis.\n",
      " |      \n",
      " |      Returns False unless there at least one element within a series or\n",
      " |      along a Dataframe axis that is True or equivalent (e.g. non-zero or\n",
      " |      non-empty).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default 0\n",
      " |          Indicate which axis or axes should be reduced.\n",
      " |      \n",
      " |          * 0 / 'index' : reduce the index, return a Series whose index is the\n",
      " |            original column labels.\n",
      " |          * 1 / 'columns' : reduce the columns, return a Series whose index is the\n",
      " |            original index.\n",
      " |          * None : reduce all axes, return a scalar.\n",
      " |      \n",
      " |      bool_only : bool, default None\n",
      " |          Include only boolean columns. If None, will attempt to use everything,\n",
      " |          then use only boolean data. Not implemented for Series.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values. If the entire row/column is NA and skipna is\n",
      " |          True, then the result will be False, as for an empty row/column.\n",
      " |          If skipna is False, then NA are treated as True, because these are not\n",
      " |          equal to zero.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      **kwargs : any, default None\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      scalar or Series\n",
      " |          If level is specified, then, Series is returned; otherwise, scalar\n",
      " |          is returned.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.any : Numpy version of this method.\n",
      " |      Series.any : Return whether any element is True.\n",
      " |      Series.all : Return whether all elements are True.\n",
      " |      DataFrame.any : Return whether any element is True over requested axis.\n",
      " |      DataFrame.all : Return whether all elements are True over requested axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      For Series input, the output is a scalar indicating whether any element\n",
      " |      is True.\n",
      " |      \n",
      " |      >>> pd.Series([False, False]).any()\n",
      " |      False\n",
      " |      >>> pd.Series([True, False]).any()\n",
      " |      True\n",
      " |      >>> pd.Series([]).any()\n",
      " |      False\n",
      " |      >>> pd.Series([np.nan]).any()\n",
      " |      False\n",
      " |      >>> pd.Series([np.nan]).any(skipna=False)\n",
      " |      True\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      Whether each column contains at least one True element (the default).\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [1, 2], \"B\": [0, 2], \"C\": [0, 0]})\n",
      " |      >>> df\n",
      " |         A  B  C\n",
      " |      0  1  0  0\n",
      " |      1  2  2  0\n",
      " |      \n",
      " |      >>> df.any()\n",
      " |      A     True\n",
      " |      B     True\n",
      " |      C    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      Aggregating over the columns.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [True, False], \"B\": [1, 2]})\n",
      " |      >>> df\n",
      " |             A  B\n",
      " |      0   True  1\n",
      " |      1  False  2\n",
      " |      \n",
      " |      >>> df.any(axis='columns')\n",
      " |      0    True\n",
      " |      1    True\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [True, False], \"B\": [1, 0]})\n",
      " |      >>> df\n",
      " |             A  B\n",
      " |      0   True  1\n",
      " |      1  False  0\n",
      " |      \n",
      " |      >>> df.any(axis='columns')\n",
      " |      0    True\n",
      " |      1    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      Aggregating over the entire DataFrame with ``axis=None``.\n",
      " |      \n",
      " |      >>> df.any(axis=None)\n",
      " |      True\n",
      " |      \n",
      " |      `any` for an empty DataFrame is an empty Series.\n",
      " |      \n",
      " |      >>> pd.DataFrame([]).any()\n",
      " |      Series([], dtype: bool)\n",
      " |  \n",
      " |  append(self, to_append, ignore_index=False, verify_integrity=False)\n",
      " |      Concatenate two or more Series.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      to_append : Series or list/tuple of Series\n",
      " |      ignore_index : boolean, default False\n",
      " |          If True, do not use the index labels.\n",
      " |      \n",
      " |          .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      verify_integrity : boolean, default False\n",
      " |          If True, raise Exception on creating index with duplicates\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      appended : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      concat : General function to concatenate DataFrame, Series\n",
      " |          or Panel objects.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Iteratively appending to a Series can be more computationally intensive\n",
      " |      than a single concatenate. A better solution is to append values to a\n",
      " |      list and then concatenate the list with the original Series all at\n",
      " |      once.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s1 = pd.Series([1, 2, 3])\n",
      " |      >>> s2 = pd.Series([4, 5, 6])\n",
      " |      >>> s3 = pd.Series([4, 5, 6], index=[3,4,5])\n",
      " |      >>> s1.append(s2)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      0    4\n",
      " |      1    5\n",
      " |      2    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s1.append(s3)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      4    5\n",
      " |      5    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      With `ignore_index` set to True:\n",
      " |      \n",
      " |      >>> s1.append(s2, ignore_index=True)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      4    5\n",
      " |      5    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      With `verify_integrity` set to True:\n",
      " |      \n",
      " |      >>> s1.append(s2, verify_integrity=True)\n",
      " |      Traceback (most recent call last):\n",
      " |      ...\n",
      " |      ValueError: Indexes have overlapping values: [0, 1, 2]\n",
      " |  \n",
      " |  apply(self, func, convert_dtype=True, args=(), **kwds)\n",
      " |      Invoke function on values of Series.\n",
      " |      \n",
      " |      Can be ufunc (a NumPy function that applies to the entire Series)\n",
      " |      or a Python function that only works on single values.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      func : function\n",
      " |          Python function or NumPy ufunc to apply.\n",
      " |      convert_dtype : bool, default True\n",
      " |          Try to find better dtype for elementwise function results. If\n",
      " |          False, leave as dtype=object.\n",
      " |      args : tuple\n",
      " |          Positional arguments passed to func after the series value.\n",
      " |      **kwds\n",
      " |          Additional keyword arguments passed to func.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          If func returns a Series object the result will be a DataFrame.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.map: For element-wise operations.\n",
      " |      Series.agg: Only perform aggregating type operations.\n",
      " |      Series.transform: Only perform transforming type operations.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Create a series with typical summer temperatures for each city.\n",
      " |      \n",
      " |      >>> s = pd.Series([20, 21, 12],\n",
      " |      ...               index=['London', 'New York', 'Helsinki'])\n",
      " |      >>> s\n",
      " |      London      20\n",
      " |      New York    21\n",
      " |      Helsinki    12\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Square the values by defining a function and passing it as an\n",
      " |      argument to ``apply()``.\n",
      " |      \n",
      " |      >>> def square(x):\n",
      " |      ...     return x ** 2\n",
      " |      >>> s.apply(square)\n",
      " |      London      400\n",
      " |      New York    441\n",
      " |      Helsinki    144\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Square the values by passing an anonymous function as an\n",
      " |      argument to ``apply()``.\n",
      " |      \n",
      " |      >>> s.apply(lambda x: x ** 2)\n",
      " |      London      400\n",
      " |      New York    441\n",
      " |      Helsinki    144\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Define a custom function that needs additional positional\n",
      " |      arguments and pass these additional arguments using the\n",
      " |      ``args`` keyword.\n",
      " |      \n",
      " |      >>> def subtract_custom_value(x, custom_value):\n",
      " |      ...     return x - custom_value\n",
      " |      \n",
      " |      >>> s.apply(subtract_custom_value, args=(5,))\n",
      " |      London      15\n",
      " |      New York    16\n",
      " |      Helsinki     7\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Define a custom function that takes keyword arguments\n",
      " |      and pass these arguments to ``apply``.\n",
      " |      \n",
      " |      >>> def add_custom_values(x, **kwargs):\n",
      " |      ...     for month in kwargs:\n",
      " |      ...         x += kwargs[month]\n",
      " |      ...     return x\n",
      " |      \n",
      " |      >>> s.apply(add_custom_values, june=30, july=20, august=25)\n",
      " |      London      95\n",
      " |      New York    96\n",
      " |      Helsinki    87\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Use a function from the Numpy library.\n",
      " |      \n",
      " |      >>> s.apply(np.log)\n",
      " |      London      2.995732\n",
      " |      New York    3.044522\n",
      " |      Helsinki    2.484907\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  argmax = idxmax(self, axis=0, skipna=True, *args, **kwargs)\n",
      " |      Return the row label of the maximum value.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          \n",
      " |      The current behaviour of 'Series.argmax' is deprecated, use 'idxmax'\n",
      " |      instead.\n",
      " |      The behavior of 'argmax' will be corrected to return the positional\n",
      " |      maximum in the future. For now, use 'series.values.argmax' or\n",
      " |      'np.argmax(np.array(values))' to get the position of the maximum\n",
      " |      row.\n",
      " |      \n",
      " |      If multiple values equal the maximum, the first row label with that\n",
      " |      value is returned.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If the entire Series is NA, the result\n",
      " |          will be NA.\n",
      " |      axis : int, default 0\n",
      " |          For compatibility with DataFrame.idxmax. Redundant for application\n",
      " |          on Series.\n",
      " |      *args, **kwargs\n",
      " |          Additional keywords have no effect but might be accepted\n",
      " |          for compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      idxmax : Index of maximum of values.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError\n",
      " |          If the Series is empty.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.argmax : Return indices of the maximum values\n",
      " |          along the given axis.\n",
      " |      DataFrame.idxmax : Return index of first occurrence of maximum\n",
      " |          over requested axis.\n",
      " |      Series.idxmin : Return index *label* of the first occurrence\n",
      " |          of minimum of values.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This method is the Series version of ``ndarray.argmax``. This method\n",
      " |      returns the label of the maximum, while ``ndarray.argmax`` returns\n",
      " |      the position. To get the position, use ``series.values.argmax()``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(data=[1, None, 4, 3, 4],\n",
      " |      ...               index=['A', 'B', 'C', 'D', 'E'])\n",
      " |      >>> s\n",
      " |      A    1.0\n",
      " |      B    NaN\n",
      " |      C    4.0\n",
      " |      D    3.0\n",
      " |      E    4.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.idxmax()\n",
      " |      'C'\n",
      " |      \n",
      " |      If `skipna` is False and there is an NA value in the data,\n",
      " |      the function returns ``nan``.\n",
      " |      \n",
      " |      >>> s.idxmax(skipna=False)\n",
      " |      nan\n",
      " |  \n",
      " |  argmin = idxmin(self, axis=0, skipna=True, *args, **kwargs)\n",
      " |      Return the row label of the minimum value.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          \n",
      " |      The current behaviour of 'Series.argmin' is deprecated, use 'idxmin'\n",
      " |      instead.\n",
      " |      The behavior of 'argmin' will be corrected to return the positional\n",
      " |      minimum in the future. For now, use 'series.values.argmin' or\n",
      " |      'np.argmin(np.array(values))' to get the position of the minimum\n",
      " |      row.\n",
      " |      \n",
      " |      If multiple values equal the minimum, the first row label with that\n",
      " |      value is returned.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If the entire Series is NA, the result\n",
      " |          will be NA.\n",
      " |      axis : int, default 0\n",
      " |          For compatibility with DataFrame.idxmin. Redundant for application\n",
      " |          on Series.\n",
      " |      *args, **kwargs\n",
      " |          Additional keywords have no effect but might be accepted\n",
      " |          for compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      idxmin : Index of minimum of values.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError\n",
      " |          If the Series is empty.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.argmin : Return indices of the minimum values\n",
      " |          along the given axis.\n",
      " |      DataFrame.idxmin : Return index of first occurrence of minimum\n",
      " |          over requested axis.\n",
      " |      Series.idxmax : Return index *label* of the first occurrence\n",
      " |          of maximum of values.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This method is the Series version of ``ndarray.argmin``. This method\n",
      " |      returns the label of the minimum, while ``ndarray.argmin`` returns\n",
      " |      the position. To get the position, use ``series.values.argmin()``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(data=[1, None, 4, 1],\n",
      " |      ...               index=['A' ,'B' ,'C' ,'D'])\n",
      " |      >>> s\n",
      " |      A    1.0\n",
      " |      B    NaN\n",
      " |      C    4.0\n",
      " |      D    1.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.idxmin()\n",
      " |      'A'\n",
      " |      \n",
      " |      If `skipna` is False and there is an NA value in the data,\n",
      " |      the function returns ``nan``.\n",
      " |      \n",
      " |      >>> s.idxmin(skipna=False)\n",
      " |      nan\n",
      " |  \n",
      " |  argsort(self, axis=0, kind='quicksort', order=None)\n",
      " |      Overrides ndarray.argsort. Argsorts the value, omitting NA/null values,\n",
      " |      and places the result in the same locations as the non-NA values.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : int\n",
      " |          Has no effect but is accepted for compatibility with numpy.\n",
      " |      kind : {'mergesort', 'quicksort', 'heapsort'}, default 'quicksort'\n",
      " |          Choice of sorting algorithm. See np.sort for more\n",
      " |          information. 'mergesort' is the only stable algorithm\n",
      " |      order : None\n",
      " |          Has no effect but is accepted for compatibility with numpy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      argsorted : Series, with -1 indicated where nan values are present\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.argsort\n",
      " |  \n",
      " |  autocorr(self, lag=1)\n",
      " |      Compute the lag-N autocorrelation.\n",
      " |      \n",
      " |      This method computes the Pearson correlation between\n",
      " |      the Series and its shifted self.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      lag : int, default 1\n",
      " |          Number of lags to apply before performing autocorrelation.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      float\n",
      " |          The Pearson correlation between self and self.shift(lag).\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.corr : Compute the correlation between two Series.\n",
      " |      Series.shift : Shift index by desired number of periods.\n",
      " |      DataFrame.corr : Compute pairwise correlation of columns.\n",
      " |      DataFrame.corrwith : Compute pairwise correlation between rows or\n",
      " |          columns of two DataFrame objects.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      If the Pearson correlation is not well defined return 'NaN'.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([0.25, 0.5, 0.2, -0.05])\n",
      " |      >>> s.autocorr()  # doctest: +ELLIPSIS\n",
      " |      0.10355...\n",
      " |      >>> s.autocorr(lag=2)  # doctest: +ELLIPSIS\n",
      " |      -0.99999...\n",
      " |      \n",
      " |      If the Pearson correlation is not well defined, then 'NaN' is returned.\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 0, 0, 0])\n",
      " |      >>> s.autocorr()\n",
      " |      nan\n",
      " |  \n",
      " |  between(self, left, right, inclusive=True)\n",
      " |      Return boolean Series equivalent to left <= series <= right.\n",
      " |      \n",
      " |      This function returns a boolean vector containing `True` wherever the\n",
      " |      corresponding Series element is between the boundary values `left` and\n",
      " |      `right`. NA values are treated as `False`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      left : scalar\n",
      " |          Left boundary.\n",
      " |      right : scalar\n",
      " |          Right boundary.\n",
      " |      inclusive : bool, default True\n",
      " |          Include boundaries.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Each element will be a boolean.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.gt : Greater than of series and other.\n",
      " |      Series.lt : Less than of series and other.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This function is equivalent to ``(left <= ser) & (ser <= right)``\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([2, 0, 4, 8, np.nan])\n",
      " |      \n",
      " |      Boundary values are included by default:\n",
      " |      \n",
      " |      >>> s.between(1, 4)\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      With `inclusive` set to ``False`` boundary values are excluded:\n",
      " |      \n",
      " |      >>> s.between(1, 4, inclusive=False)\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      2    False\n",
      " |      3    False\n",
      " |      4    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      `left` and `right` can be any scalar value:\n",
      " |      \n",
      " |      >>> s = pd.Series(['Alice', 'Bob', 'Carol', 'Eve'])\n",
      " |      >>> s.between('Anna', 'Daniel')\n",
      " |      0    False\n",
      " |      1     True\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  combine(self, other, func, fill_value=None)\n",
      " |      Combine the Series with a Series or scalar according to `func`.\n",
      " |      \n",
      " |      Combine the Series and `other` using `func` to perform elementwise\n",
      " |      selection for combined Series.\n",
      " |      `fill_value` is assumed when value is missing at some index\n",
      " |      from one of the two objects being combined.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar\n",
      " |          The value(s) to be combined with the `Series`.\n",
      " |      func : function\n",
      " |          Function that takes two scalars as inputs and returns an element.\n",
      " |      fill_value : scalar, optional\n",
      " |          The value to assume when an index is missing from\n",
      " |          one Series or the other. The default specifies to use the\n",
      " |          appropriate NaN value for the underlying dtype of the Series.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          The result of combining the Series with the other object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.combine_first : Combine Series values, choosing the calling\n",
      " |          Series' values first.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Consider 2 Datasets ``s1`` and ``s2`` containing\n",
      " |      highest clocked speeds of different birds.\n",
      " |      \n",
      " |      >>> s1 = pd.Series({'falcon': 330.0, 'eagle': 160.0})\n",
      " |      >>> s1\n",
      " |      falcon    330.0\n",
      " |      eagle     160.0\n",
      " |      dtype: float64\n",
      " |      >>> s2 = pd.Series({'falcon': 345.0, 'eagle': 200.0, 'duck': 30.0})\n",
      " |      >>> s2\n",
      " |      falcon    345.0\n",
      " |      eagle     200.0\n",
      " |      duck       30.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Now, to combine the two datasets and view the highest speeds\n",
      " |      of the birds across the two datasets\n",
      " |      \n",
      " |      >>> s1.combine(s2, max)\n",
      " |      duck        NaN\n",
      " |      eagle     200.0\n",
      " |      falcon    345.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      In the previous example, the resulting value for duck is missing,\n",
      " |      because the maximum of a NaN and a float is a NaN.\n",
      " |      So, in the example, we set ``fill_value=0``,\n",
      " |      so the maximum value returned will be the value from some dataset.\n",
      " |      \n",
      " |      >>> s1.combine(s2, max, fill_value=0)\n",
      " |      duck       30.0\n",
      " |      eagle     200.0\n",
      " |      falcon    345.0\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  combine_first(self, other)\n",
      " |      Combine Series values, choosing the calling Series's values first.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series\n",
      " |          The value(s) to be combined with the `Series`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          The result of combining the Series with the other object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.combine : Perform elementwise operation on two Series\n",
      " |          using a given function.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Result index will be the union of the two indexes.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s1 = pd.Series([1, np.nan])\n",
      " |      >>> s2 = pd.Series([3, 4])\n",
      " |      >>> s1.combine_first(s2)\n",
      " |      0    1.0\n",
      " |      1    4.0\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  compound(self, axis=None, skipna=None, level=None)\n",
      " |      Return the compound percentage of the values for the requested axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      compounded : scalar or Series (if level specified)\n",
      " |  \n",
      " |  compress(self, condition, *args, **kwargs)\n",
      " |      Return selected slices of an array along given axis as a Series.\n",
      " |      \n",
      " |      .. deprecated:: 0.24.0\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.compress\n",
      " |  \n",
      " |  corr(self, other, method='pearson', min_periods=None)\n",
      " |      Compute correlation with `other` Series, excluding missing values.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series\n",
      " |      method : {'pearson', 'kendall', 'spearman'} or callable\n",
      " |          * pearson : standard correlation coefficient\n",
      " |          * kendall : Kendall Tau correlation coefficient\n",
      " |          * spearman : Spearman rank correlation\n",
      " |          * callable: callable with input two 1d ndarray\n",
      " |              and returning a float\n",
      " |              .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      min_periods : int, optional\n",
      " |          Minimum number of observations needed to have a valid result\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      correlation : float\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> histogram_intersection = lambda a, b: np.minimum(a, b\n",
      " |      ... ).sum().round(decimals=1)\n",
      " |      >>> s1 = pd.Series([.2, .0, .6, .2])\n",
      " |      >>> s2 = pd.Series([.3, .6, .0, .1])\n",
      " |      >>> s1.corr(s2, method=histogram_intersection)\n",
      " |      0.3\n",
      " |  \n",
      " |  count(self, level=None)\n",
      " |      Return number of non-NA/null observations in the Series.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a smaller Series\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      nobs : int or Series (if level specified)\n",
      " |  \n",
      " |  cov(self, other, min_periods=None)\n",
      " |      Compute covariance with Series, excluding missing values.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series\n",
      " |      min_periods : int, optional\n",
      " |          Minimum number of observations needed to have a valid result\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      covariance : float\n",
      " |      \n",
      " |      Normalized by N-1 (unbiased estimator).\n",
      " |  \n",
      " |  cummax(self, axis=None, skipna=True, *args, **kwargs)\n",
      " |      Return cumulative maximum over a DataFrame or Series axis.\n",
      " |      \n",
      " |      Returns a DataFrame or Series of the same size containing the cumulative\n",
      " |      maximum.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The index or the name of the axis. 0 is equivalent to None or 'index'.\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA.\n",
      " |      *args, **kwargs :\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      cummax : scalar or Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      core.window.Expanding.max : Similar functionality\n",
      " |          but ignores ``NaN`` values.\n",
      " |      Series.max : Return the maximum over\n",
      " |          Series axis.\n",
      " |      Series.cummax : Return cumulative maximum over Series axis.\n",
      " |      Series.cummin : Return cumulative minimum over Series axis.\n",
      " |      Series.cumsum : Return cumulative sum over Series axis.\n",
      " |      Series.cumprod : Return cumulative product over Series axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([2, np.nan, 5, -1, 0])\n",
      " |      >>> s\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    5.0\n",
      " |      3   -1.0\n",
      " |      4    0.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      By default, NA values are ignored.\n",
      " |      \n",
      " |      >>> s.cummax()\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    5.0\n",
      " |      3    5.0\n",
      " |      4    5.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      To include NA values in the operation, use ``skipna=False``\n",
      " |      \n",
      " |      >>> s.cummax(skipna=False)\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[2.0, 1.0],\n",
      " |      ...                    [3.0, np.nan],\n",
      " |      ...                    [1.0, 0.0]],\n",
      " |      ...                    columns=list('AB'))\n",
      " |      >>> df\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |      \n",
      " |      By default, iterates over rows and finds the maximum\n",
      " |      in each column. This is equivalent to ``axis=None`` or ``axis='index'``.\n",
      " |      \n",
      " |      >>> df.cummax()\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  3.0  1.0\n",
      " |      \n",
      " |      To iterate over columns and find the maximum in each row,\n",
      " |      use ``axis=1``\n",
      " |      \n",
      " |      >>> df.cummax(axis=1)\n",
      " |           A    B\n",
      " |      0  2.0  2.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  1.0\n",
      " |  \n",
      " |  cummin(self, axis=None, skipna=True, *args, **kwargs)\n",
      " |      Return cumulative minimum over a DataFrame or Series axis.\n",
      " |      \n",
      " |      Returns a DataFrame or Series of the same size containing the cumulative\n",
      " |      minimum.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The index or the name of the axis. 0 is equivalent to None or 'index'.\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA.\n",
      " |      *args, **kwargs :\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      cummin : scalar or Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      core.window.Expanding.min : Similar functionality\n",
      " |          but ignores ``NaN`` values.\n",
      " |      Series.min : Return the minimum over\n",
      " |          Series axis.\n",
      " |      Series.cummax : Return cumulative maximum over Series axis.\n",
      " |      Series.cummin : Return cumulative minimum over Series axis.\n",
      " |      Series.cumsum : Return cumulative sum over Series axis.\n",
      " |      Series.cumprod : Return cumulative product over Series axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([2, np.nan, 5, -1, 0])\n",
      " |      >>> s\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    5.0\n",
      " |      3   -1.0\n",
      " |      4    0.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      By default, NA values are ignored.\n",
      " |      \n",
      " |      >>> s.cummin()\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    2.0\n",
      " |      3   -1.0\n",
      " |      4   -1.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      To include NA values in the operation, use ``skipna=False``\n",
      " |      \n",
      " |      >>> s.cummin(skipna=False)\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[2.0, 1.0],\n",
      " |      ...                    [3.0, np.nan],\n",
      " |      ...                    [1.0, 0.0]],\n",
      " |      ...                    columns=list('AB'))\n",
      " |      >>> df\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |      \n",
      " |      By default, iterates over rows and finds the minimum\n",
      " |      in each column. This is equivalent to ``axis=None`` or ``axis='index'``.\n",
      " |      \n",
      " |      >>> df.cummin()\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  2.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |      \n",
      " |      To iterate over columns and find the minimum in each row,\n",
      " |      use ``axis=1``\n",
      " |      \n",
      " |      >>> df.cummin(axis=1)\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |  \n",
      " |  cumprod(self, axis=None, skipna=True, *args, **kwargs)\n",
      " |      Return cumulative product over a DataFrame or Series axis.\n",
      " |      \n",
      " |      Returns a DataFrame or Series of the same size containing the cumulative\n",
      " |      product.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The index or the name of the axis. 0 is equivalent to None or 'index'.\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA.\n",
      " |      *args, **kwargs :\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      cumprod : scalar or Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      core.window.Expanding.prod : Similar functionality\n",
      " |          but ignores ``NaN`` values.\n",
      " |      Series.prod : Return the product over\n",
      " |          Series axis.\n",
      " |      Series.cummax : Return cumulative maximum over Series axis.\n",
      " |      Series.cummin : Return cumulative minimum over Series axis.\n",
      " |      Series.cumsum : Return cumulative sum over Series axis.\n",
      " |      Series.cumprod : Return cumulative product over Series axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([2, np.nan, 5, -1, 0])\n",
      " |      >>> s\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    5.0\n",
      " |      3   -1.0\n",
      " |      4    0.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      By default, NA values are ignored.\n",
      " |      \n",
      " |      >>> s.cumprod()\n",
      " |      0     2.0\n",
      " |      1     NaN\n",
      " |      2    10.0\n",
      " |      3   -10.0\n",
      " |      4    -0.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      To include NA values in the operation, use ``skipna=False``\n",
      " |      \n",
      " |      >>> s.cumprod(skipna=False)\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[2.0, 1.0],\n",
      " |      ...                    [3.0, np.nan],\n",
      " |      ...                    [1.0, 0.0]],\n",
      " |      ...                    columns=list('AB'))\n",
      " |      >>> df\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |      \n",
      " |      By default, iterates over rows and finds the product\n",
      " |      in each column. This is equivalent to ``axis=None`` or ``axis='index'``.\n",
      " |      \n",
      " |      >>> df.cumprod()\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  6.0  NaN\n",
      " |      2  6.0  0.0\n",
      " |      \n",
      " |      To iterate over columns and find the product in each row,\n",
      " |      use ``axis=1``\n",
      " |      \n",
      " |      >>> df.cumprod(axis=1)\n",
      " |           A    B\n",
      " |      0  2.0  2.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |  \n",
      " |  cumsum(self, axis=None, skipna=True, *args, **kwargs)\n",
      " |      Return cumulative sum over a DataFrame or Series axis.\n",
      " |      \n",
      " |      Returns a DataFrame or Series of the same size containing the cumulative\n",
      " |      sum.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The index or the name of the axis. 0 is equivalent to None or 'index'.\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA.\n",
      " |      *args, **kwargs :\n",
      " |          Additional keywords have no effect but might be accepted for\n",
      " |          compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      cumsum : scalar or Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      core.window.Expanding.sum : Similar functionality\n",
      " |          but ignores ``NaN`` values.\n",
      " |      Series.sum : Return the sum over\n",
      " |          Series axis.\n",
      " |      Series.cummax : Return cumulative maximum over Series axis.\n",
      " |      Series.cummin : Return cumulative minimum over Series axis.\n",
      " |      Series.cumsum : Return cumulative sum over Series axis.\n",
      " |      Series.cumprod : Return cumulative product over Series axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([2, np.nan, 5, -1, 0])\n",
      " |      >>> s\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    5.0\n",
      " |      3   -1.0\n",
      " |      4    0.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      By default, NA values are ignored.\n",
      " |      \n",
      " |      >>> s.cumsum()\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    7.0\n",
      " |      3    6.0\n",
      " |      4    6.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      To include NA values in the operation, use ``skipna=False``\n",
      " |      \n",
      " |      >>> s.cumsum(skipna=False)\n",
      " |      0    2.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[2.0, 1.0],\n",
      " |      ...                    [3.0, np.nan],\n",
      " |      ...                    [1.0, 0.0]],\n",
      " |      ...                    columns=list('AB'))\n",
      " |      >>> df\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  0.0\n",
      " |      \n",
      " |      By default, iterates over rows and finds the sum\n",
      " |      in each column. This is equivalent to ``axis=None`` or ``axis='index'``.\n",
      " |      \n",
      " |      >>> df.cumsum()\n",
      " |           A    B\n",
      " |      0  2.0  1.0\n",
      " |      1  5.0  NaN\n",
      " |      2  6.0  1.0\n",
      " |      \n",
      " |      To iterate over columns and find the sum in each row,\n",
      " |      use ``axis=1``\n",
      " |      \n",
      " |      >>> df.cumsum(axis=1)\n",
      " |           A    B\n",
      " |      0  2.0  3.0\n",
      " |      1  3.0  NaN\n",
      " |      2  1.0  1.0\n",
      " |  \n",
      " |  diff(self, periods=1)\n",
      " |      First discrete difference of element.\n",
      " |      \n",
      " |      Calculates the difference of a Series element compared with another\n",
      " |      element in the Series (default is element in previous row).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      periods : int, default 1\n",
      " |          Periods to shift for calculating difference, accepts negative\n",
      " |          values.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      diffed : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.pct_change: Percent change over given number of periods.\n",
      " |      Series.shift: Shift index by desired number of periods with an\n",
      " |          optional time freq.\n",
      " |      DataFrame.diff: First discrete difference of object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Difference with previous row\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 1, 2, 3, 5, 8])\n",
      " |      >>> s.diff()\n",
      " |      0    NaN\n",
      " |      1    0.0\n",
      " |      2    1.0\n",
      " |      3    1.0\n",
      " |      4    2.0\n",
      " |      5    3.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Difference with 3rd previous row\n",
      " |      \n",
      " |      >>> s.diff(periods=3)\n",
      " |      0    NaN\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    2.0\n",
      " |      4    4.0\n",
      " |      5    6.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Difference with following row\n",
      " |      \n",
      " |      >>> s.diff(periods=-1)\n",
      " |      0    0.0\n",
      " |      1   -1.0\n",
      " |      2   -1.0\n",
      " |      3   -2.0\n",
      " |      4   -3.0\n",
      " |      5    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  div = truediv(self, other, level=None, fill_value=None, axis=0)\n",
      " |  \n",
      " |  divide = truediv(self, other, level=None, fill_value=None, axis=0)\n",
      " |  \n",
      " |  divmod(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Integer division and modulo of series and other, element-wise (binary operator `divmod`).\n",
      " |      \n",
      " |      Equivalent to ``series divmod other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rdivmod\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  dot(self, other)\n",
      " |      Compute the dot product between the Series and the columns of other.\n",
      " |      \n",
      " |      This method computes the dot product between the Series and another\n",
      " |      one, or the Series and each columns of a DataFrame, or the Series and\n",
      " |      each columns of an array.\n",
      " |      \n",
      " |      It can also be called using `self @ other` in Python >= 3.5.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series, DataFrame or array-like\n",
      " |          The other object to compute the dot product with its columns.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      scalar, Series or numpy.ndarray\n",
      " |          Return the dot product of the Series and other if other is a\n",
      " |          Series, the Series of the dot product of Series and each rows of\n",
      " |          other if other is a DataFrame or a numpy.ndarray between the Series\n",
      " |          and each columns of the numpy array.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.dot: Compute the matrix product with the DataFrame.\n",
      " |      Series.mul: Multiplication of series and other, element-wise.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The Series and other has to share the same index if other is a Series\n",
      " |      or a DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([0, 1, 2, 3])\n",
      " |      >>> other = pd.Series([-1, 2, -3, 4])\n",
      " |      >>> s.dot(other)\n",
      " |      8\n",
      " |      >>> s @ other\n",
      " |      8\n",
      " |      >>> df = pd.DataFrame([[0 ,1], [-2, 3], [4, -5], [6, 7]])\n",
      " |      >>> s.dot(df)\n",
      " |      0    24\n",
      " |      1    14\n",
      " |      dtype: int64\n",
      " |      >>> arr = np.array([[0, 1], [-2, 3], [4, -5], [6, 7]])\n",
      " |      >>> s.dot(arr)\n",
      " |      array([24, 14])\n",
      " |  \n",
      " |  drop(self, labels=None, axis=0, index=None, columns=None, level=None, inplace=False, errors='raise')\n",
      " |      Return Series with specified index labels removed.\n",
      " |      \n",
      " |      Remove elements of a Series based on specifying the index labels.\n",
      " |      When using a multi-index, labels on different levels can be removed\n",
      " |      by specifying the level.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      labels : single label or list-like\n",
      " |          Index labels to drop.\n",
      " |      axis : 0, default 0\n",
      " |          Redundant for application on Series.\n",
      " |      index, columns : None\n",
      " |          Redundant for application on Series, but index can be used instead\n",
      " |          of labels.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      level : int or level name, optional\n",
      " |          For MultiIndex, level for which the labels will be removed.\n",
      " |      inplace : bool, default False\n",
      " |          If True, do operation inplace and return None.\n",
      " |      errors : {'ignore', 'raise'}, default 'raise'\n",
      " |          If 'ignore', suppress error and only existing labels are dropped.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      dropped : pandas.Series\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      KeyError\n",
      " |          If none of the labels are found in the index.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.reindex : Return only specified index labels of Series.\n",
      " |      Series.dropna : Return series without null values.\n",
      " |      Series.drop_duplicates : Return Series with duplicate values removed.\n",
      " |      DataFrame.drop : Drop specified labels from rows or columns.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(data=np.arange(3), index=['A','B','C'])\n",
      " |      >>> s\n",
      " |      A  0\n",
      " |      B  1\n",
      " |      C  2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Drop labels B en C\n",
      " |      \n",
      " |      >>> s.drop(labels=['B','C'])\n",
      " |      A  0\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Drop 2nd level label in MultiIndex Series\n",
      " |      \n",
      " |      >>> midx = pd.MultiIndex(levels=[['lama', 'cow', 'falcon'],\n",
      " |      ...                              ['speed', 'weight', 'length']],\n",
      " |      ...                      codes=[[0, 0, 0, 1, 1, 1, 2, 2, 2],\n",
      " |      ...                             [0, 1, 2, 0, 1, 2, 0, 1, 2]])\n",
      " |      >>> s = pd.Series([45, 200, 1.2, 30, 250, 1.5, 320, 1, 0.3],\n",
      " |      ...               index=midx)\n",
      " |      >>> s\n",
      " |      lama    speed      45.0\n",
      " |              weight    200.0\n",
      " |              length      1.2\n",
      " |      cow     speed      30.0\n",
      " |              weight    250.0\n",
      " |              length      1.5\n",
      " |      falcon  speed     320.0\n",
      " |              weight      1.0\n",
      " |              length      0.3\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.drop(labels='weight', level=1)\n",
      " |      lama    speed      45.0\n",
      " |              length      1.2\n",
      " |      cow     speed      30.0\n",
      " |              length      1.5\n",
      " |      falcon  speed     320.0\n",
      " |              length      0.3\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  drop_duplicates(self, keep='first', inplace=False)\n",
      " |      Return Series with duplicate values removed.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      keep : {'first', 'last', ``False``}, default 'first'\n",
      " |          - 'first' : Drop duplicates except for the first occurrence.\n",
      " |          - 'last' : Drop duplicates except for the last occurrence.\n",
      " |          - ``False`` : Drop all duplicates.\n",
      " |      inplace : boolean, default ``False``\n",
      " |          If ``True``, performs operation inplace and returns None.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      deduplicated : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Index.drop_duplicates : Equivalent method on Index.\n",
      " |      DataFrame.drop_duplicates : Equivalent method on DataFrame.\n",
      " |      Series.duplicated : Related method on Series, indicating duplicate\n",
      " |          Series values.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Generate an Series with duplicated entries.\n",
      " |      \n",
      " |      >>> s = pd.Series(['lama', 'cow', 'lama', 'beetle', 'lama', 'hippo'],\n",
      " |      ...               name='animal')\n",
      " |      >>> s\n",
      " |      0      lama\n",
      " |      1       cow\n",
      " |      2      lama\n",
      " |      3    beetle\n",
      " |      4      lama\n",
      " |      5     hippo\n",
      " |      Name: animal, dtype: object\n",
      " |      \n",
      " |      With the 'keep' parameter, the selection behaviour of duplicated values\n",
      " |      can be changed. The value 'first' keeps the first occurrence for each\n",
      " |      set of duplicated entries. The default value of keep is 'first'.\n",
      " |      \n",
      " |      >>> s.drop_duplicates()\n",
      " |      0      lama\n",
      " |      1       cow\n",
      " |      3    beetle\n",
      " |      5     hippo\n",
      " |      Name: animal, dtype: object\n",
      " |      \n",
      " |      The value 'last' for parameter 'keep' keeps the last occurrence for\n",
      " |      each set of duplicated entries.\n",
      " |      \n",
      " |      >>> s.drop_duplicates(keep='last')\n",
      " |      1       cow\n",
      " |      3    beetle\n",
      " |      4      lama\n",
      " |      5     hippo\n",
      " |      Name: animal, dtype: object\n",
      " |      \n",
      " |      The value ``False`` for parameter 'keep' discards all sets of\n",
      " |      duplicated entries. Setting the value of 'inplace' to ``True`` performs\n",
      " |      the operation inplace and returns ``None``.\n",
      " |      \n",
      " |      >>> s.drop_duplicates(keep=False, inplace=True)\n",
      " |      >>> s\n",
      " |      1       cow\n",
      " |      3    beetle\n",
      " |      5     hippo\n",
      " |      Name: animal, dtype: object\n",
      " |  \n",
      " |  dropna(self, axis=0, inplace=False, **kwargs)\n",
      " |      Return a new Series with missing values removed.\n",
      " |      \n",
      " |      See the :ref:`User Guide <missing_data>` for more on which values are\n",
      " |      considered missing, and how to work with missing data.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index'}, default 0\n",
      " |          There is only one axis to drop values from.\n",
      " |      inplace : bool, default False\n",
      " |          If True, do operation inplace and return None.\n",
      " |      **kwargs\n",
      " |          Not in use.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Series with NA entries dropped from it.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.isna: Indicate missing values.\n",
      " |      Series.notna : Indicate existing (non-missing) values.\n",
      " |      Series.fillna : Replace missing values.\n",
      " |      DataFrame.dropna : Drop rows or columns which contain NA values.\n",
      " |      Index.dropna : Drop missing indices.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> ser = pd.Series([1., 2., np.nan])\n",
      " |      >>> ser\n",
      " |      0    1.0\n",
      " |      1    2.0\n",
      " |      2    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Drop NA values from a Series.\n",
      " |      \n",
      " |      >>> ser.dropna()\n",
      " |      0    1.0\n",
      " |      1    2.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Keep the Series with valid entries in the same variable.\n",
      " |      \n",
      " |      >>> ser.dropna(inplace=True)\n",
      " |      >>> ser\n",
      " |      0    1.0\n",
      " |      1    2.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Empty strings are not considered NA values. ``None`` is considered an\n",
      " |      NA value.\n",
      " |      \n",
      " |      >>> ser = pd.Series([np.NaN, 2, pd.NaT, '', None, 'I stay'])\n",
      " |      >>> ser\n",
      " |      0       NaN\n",
      " |      1         2\n",
      " |      2       NaT\n",
      " |      3\n",
      " |      4      None\n",
      " |      5    I stay\n",
      " |      dtype: object\n",
      " |      >>> ser.dropna()\n",
      " |      1         2\n",
      " |      3\n",
      " |      5    I stay\n",
      " |      dtype: object\n",
      " |  \n",
      " |  duplicated(self, keep='first')\n",
      " |      Indicate duplicate Series values.\n",
      " |      \n",
      " |      Duplicated values are indicated as ``True`` values in the resulting\n",
      " |      Series. Either all duplicates, all except the first or all except the\n",
      " |      last occurrence of duplicates can be indicated.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      keep : {'first', 'last', False}, default 'first'\n",
      " |          - 'first' : Mark duplicates as ``True`` except for the first\n",
      " |            occurrence.\n",
      " |          - 'last' : Mark duplicates as ``True`` except for the last\n",
      " |            occurrence.\n",
      " |          - ``False`` : Mark all duplicates as ``True``.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      pandas.core.series.Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Index.duplicated : Equivalent method on pandas.Index.\n",
      " |      DataFrame.duplicated : Equivalent method on pandas.DataFrame.\n",
      " |      Series.drop_duplicates : Remove duplicate values from Series.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      By default, for each set of duplicated values, the first occurrence is\n",
      " |      set on False and all others on True:\n",
      " |      \n",
      " |      >>> animals = pd.Series(['lama', 'cow', 'lama', 'beetle', 'lama'])\n",
      " |      >>> animals.duplicated()\n",
      " |      0    False\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4     True\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      which is equivalent to\n",
      " |      \n",
      " |      >>> animals.duplicated(keep='first')\n",
      " |      0    False\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4     True\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      By using 'last', the last occurrence of each set of duplicated values\n",
      " |      is set on False and all others on True:\n",
      " |      \n",
      " |      >>> animals.duplicated(keep='last')\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4    False\n",
      " |      dtype: bool\n",
      " |      \n",
      " |      By setting keep on ``False``, all duplicates are True:\n",
      " |      \n",
      " |      >>> animals.duplicated(keep=False)\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4     True\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  eq(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Equal to of series and other, element-wise (binary operator `eq`).\n",
      " |      \n",
      " |      Equivalent to ``series == other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  ewm(self, com=None, span=None, halflife=None, alpha=None, min_periods=0, adjust=True, ignore_na=False, axis=0)\n",
      " |      Provides exponential weighted functions.\n",
      " |      \n",
      " |      .. versionadded:: 0.18.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      com : float, optional\n",
      " |          Specify decay in terms of center of mass,\n",
      " |          :math:`\\alpha = 1 / (1 + com),\\text{ for } com \\geq 0`\n",
      " |      span : float, optional\n",
      " |          Specify decay in terms of span,\n",
      " |          :math:`\\alpha = 2 / (span + 1),\\text{ for } span \\geq 1`\n",
      " |      halflife : float, optional\n",
      " |          Specify decay in terms of half-life,\n",
      " |          :math:`\\alpha = 1 - exp(log(0.5) / halflife),\\text{ for } halflife > 0`\n",
      " |      alpha : float, optional\n",
      " |          Specify smoothing factor :math:`\\alpha` directly,\n",
      " |          :math:`0 < \\alpha \\leq 1`\n",
      " |      \n",
      " |          .. versionadded:: 0.18.0\n",
      " |      \n",
      " |      min_periods : int, default 0\n",
      " |          Minimum number of observations in window required to have a value\n",
      " |          (otherwise result is NA).\n",
      " |      adjust : bool, default True\n",
      " |          Divide by decaying adjustment factor in beginning periods to account\n",
      " |          for imbalance in relative weightings (viewing EWMA as a moving average)\n",
      " |      ignore_na : bool, default False\n",
      " |          Ignore missing values when calculating weights;\n",
      " |          specify True to reproduce pre-0.15.0 behavior\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      a Window sub-classed for the particular operation\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      rolling : Provides rolling window calculations.\n",
      " |      expanding : Provides expanding transformations.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Exactly one of center of mass, span, half-life, and alpha must be provided.\n",
      " |      Allowed values and relationship between the parameters are specified in the\n",
      " |      parameter descriptions above; see the link at the end of this section for\n",
      " |      a detailed explanation.\n",
      " |      \n",
      " |      When adjust is True (default), weighted averages are calculated using\n",
      " |      weights (1-alpha)**(n-1), (1-alpha)**(n-2), ..., 1-alpha, 1.\n",
      " |      \n",
      " |      When adjust is False, weighted averages are calculated recursively as:\n",
      " |         weighted_average[0] = arg[0];\n",
      " |         weighted_average[i] = (1-alpha)*weighted_average[i-1] + alpha*arg[i].\n",
      " |      \n",
      " |      When ignore_na is False (default), weights are based on absolute positions.\n",
      " |      For example, the weights of x and y used in calculating the final weighted\n",
      " |      average of [x, None, y] are (1-alpha)**2 and 1 (if adjust is True), and\n",
      " |      (1-alpha)**2 and alpha (if adjust is False).\n",
      " |      \n",
      " |      When ignore_na is True (reproducing pre-0.15.0 behavior), weights are based\n",
      " |      on relative positions. For example, the weights of x and y used in\n",
      " |      calculating the final weighted average of [x, None, y] are 1-alpha and 1\n",
      " |      (if adjust is True), and 1-alpha and alpha (if adjust is False).\n",
      " |      \n",
      " |      More details can be found at\n",
      " |      http://pandas.pydata.org/pandas-docs/stable/computation.html#exponentially-weighted-windows\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'B': [0, 1, 2, np.nan, 4]})\n",
      " |           B\n",
      " |      0  0.0\n",
      " |      1  1.0\n",
      " |      2  2.0\n",
      " |      3  NaN\n",
      " |      4  4.0\n",
      " |      \n",
      " |      >>> df.ewm(com=0.5).mean()\n",
      " |                B\n",
      " |      0  0.000000\n",
      " |      1  0.750000\n",
      " |      2  1.615385\n",
      " |      3  1.615385\n",
      " |      4  3.670213\n",
      " |  \n",
      " |  expanding(self, min_periods=1, center=False, axis=0)\n",
      " |      Provides expanding transformations.\n",
      " |      \n",
      " |      .. versionadded:: 0.18.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      min_periods : int, default 1\n",
      " |          Minimum number of observations in window required to have a value\n",
      " |          (otherwise result is NA).\n",
      " |      center : bool, default False\n",
      " |          Set the labels at the center of the window.\n",
      " |      axis : int or str, default 0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      a Window sub-classed for the particular operation\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      rolling : Provides rolling window calculations.\n",
      " |      ewm : Provides exponential weighted functions.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      By default, the result is set to the right edge of the window. This can be\n",
      " |      changed to the center of the window by setting ``center=True``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'B': [0, 1, 2, np.nan, 4]})\n",
      " |           B\n",
      " |      0  0.0\n",
      " |      1  1.0\n",
      " |      2  2.0\n",
      " |      3  NaN\n",
      " |      4  4.0\n",
      " |      \n",
      " |      >>> df.expanding(2).sum()\n",
      " |           B\n",
      " |      0  NaN\n",
      " |      1  1.0\n",
      " |      2  3.0\n",
      " |      3  3.0\n",
      " |      4  7.0\n",
      " |  \n",
      " |  fillna(self, value=None, method=None, axis=None, inplace=False, limit=None, downcast=None, **kwargs)\n",
      " |      Fill NA/NaN values using the specified method.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      value : scalar, dict, Series, or DataFrame\n",
      " |          Value to use to fill holes (e.g. 0), alternately a\n",
      " |          dict/Series/DataFrame of values specifying which value to use for\n",
      " |          each index (for a Series) or column (for a DataFrame). (values not\n",
      " |          in the dict/Series/DataFrame will not be filled). This value cannot\n",
      " |          be a list.\n",
      " |      method : {'backfill', 'bfill', 'pad', 'ffill', None}, default None\n",
      " |          Method to use for filling holes in reindexed Series\n",
      " |          pad / ffill: propagate last valid observation forward to next valid\n",
      " |          backfill / bfill: use NEXT valid observation to fill gap\n",
      " |      axis : {0 or 'index'}\n",
      " |      inplace : boolean, default False\n",
      " |          If True, fill in place. Note: this will modify any\n",
      " |          other views on this object, (e.g. a no-copy slice for a column in a\n",
      " |          DataFrame).\n",
      " |      limit : int, default None\n",
      " |          If method is specified, this is the maximum number of consecutive\n",
      " |          NaN values to forward/backward fill. In other words, if there is\n",
      " |          a gap with more than this number of consecutive NaNs, it will only\n",
      " |          be partially filled. If method is not specified, this is the\n",
      " |          maximum number of entries along the entire axis where NaNs will be\n",
      " |          filled. Must be greater than 0 if not None.\n",
      " |      downcast : dict, default is None\n",
      " |          a dict of item->dtype of what to downcast if possible,\n",
      " |          or the string 'infer' which will try to downcast to an appropriate\n",
      " |          equal type (e.g. float64 to int64 if possible)\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      filled : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      interpolate : Fill NaN values using interpolation.\n",
      " |      reindex, asfreq\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([[np.nan, 2, np.nan, 0],\n",
      " |      ...                    [3, 4, np.nan, 1],\n",
      " |      ...                    [np.nan, np.nan, np.nan, 5],\n",
      " |      ...                    [np.nan, 3, np.nan, 4]],\n",
      " |      ...                    columns=list('ABCD'))\n",
      " |      >>> df\n",
      " |           A    B   C  D\n",
      " |      0  NaN  2.0 NaN  0\n",
      " |      1  3.0  4.0 NaN  1\n",
      " |      2  NaN  NaN NaN  5\n",
      " |      3  NaN  3.0 NaN  4\n",
      " |      \n",
      " |      Replace all NaN elements with 0s.\n",
      " |      \n",
      " |      >>> df.fillna(0)\n",
      " |          A   B   C   D\n",
      " |      0   0.0 2.0 0.0 0\n",
      " |      1   3.0 4.0 0.0 1\n",
      " |      2   0.0 0.0 0.0 5\n",
      " |      3   0.0 3.0 0.0 4\n",
      " |      \n",
      " |      We can also propagate non-null values forward or backward.\n",
      " |      \n",
      " |      >>> df.fillna(method='ffill')\n",
      " |          A   B   C   D\n",
      " |      0   NaN 2.0 NaN 0\n",
      " |      1   3.0 4.0 NaN 1\n",
      " |      2   3.0 4.0 NaN 5\n",
      " |      3   3.0 3.0 NaN 4\n",
      " |      \n",
      " |      Replace all NaN elements in column 'A', 'B', 'C', and 'D', with 0, 1,\n",
      " |      2, and 3 respectively.\n",
      " |      \n",
      " |      >>> values = {'A': 0, 'B': 1, 'C': 2, 'D': 3}\n",
      " |      >>> df.fillna(value=values)\n",
      " |          A   B   C   D\n",
      " |      0   0.0 2.0 2.0 0\n",
      " |      1   3.0 4.0 2.0 1\n",
      " |      2   0.0 1.0 2.0 5\n",
      " |      3   0.0 3.0 2.0 4\n",
      " |      \n",
      " |      Only replace the first NaN element.\n",
      " |      \n",
      " |      >>> df.fillna(value=values, limit=1)\n",
      " |          A   B   C   D\n",
      " |      0   0.0 2.0 2.0 0\n",
      " |      1   3.0 4.0 NaN 1\n",
      " |      2   NaN 1.0 NaN 5\n",
      " |      3   NaN 3.0 NaN 4\n",
      " |  \n",
      " |  floordiv(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Integer division of series and other, element-wise (binary operator `floordiv`).\n",
      " |      \n",
      " |      Equivalent to ``series // other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rfloordiv\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  ge(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Greater than or equal to of series and other, element-wise (binary operator `ge`).\n",
      " |      \n",
      " |      Equivalent to ``series >= other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  get_value(self, label, takeable=False)\n",
      " |      Quickly retrieve single value at passed index label.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          Please use .at[] or .iat[] accessors.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      label : object\n",
      " |      takeable : interpret the index as indexers, default False\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      value : scalar value\n",
      " |  \n",
      " |  get_values(self)\n",
      " |      Same as values (but handles sparseness conversions); is a view.\n",
      " |  \n",
      " |  gt(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Greater than of series and other, element-wise (binary operator `gt`).\n",
      " |      \n",
      " |      Equivalent to ``series > other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  hist = hist_series(self, by=None, ax=None, grid=True, xlabelsize=None, xrot=None, ylabelsize=None, yrot=None, figsize=None, bins=10, **kwds)\n",
      " |      Draw histogram of the input series using matplotlib.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      by : object, optional\n",
      " |          If passed, then used to form histograms for separate groups\n",
      " |      ax : matplotlib axis object\n",
      " |          If not passed, uses gca()\n",
      " |      grid : boolean, default True\n",
      " |          Whether to show axis grid lines\n",
      " |      xlabelsize : int, default None\n",
      " |          If specified changes the x-axis label size\n",
      " |      xrot : float, default None\n",
      " |          rotation of x axis labels\n",
      " |      ylabelsize : int, default None\n",
      " |          If specified changes the y-axis label size\n",
      " |      yrot : float, default None\n",
      " |          rotation of y axis labels\n",
      " |      figsize : tuple, default None\n",
      " |          figure size in inches by default\n",
      " |      bins : integer or sequence, default 10\n",
      " |          Number of histogram bins to be used. If an integer is given, bins + 1\n",
      " |          bin edges are calculated and returned. If bins is a sequence, gives\n",
      " |          bin edges, including left edge of first bin and right edge of last\n",
      " |          bin. In this case, bins is returned unmodified.\n",
      " |      bins : integer, default 10\n",
      " |          Number of histogram bins to be used\n",
      " |      `**kwds` : keywords\n",
      " |          To be passed to the actual plotting function\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      matplotlib.axes.Axes.hist : Plot a histogram using matplotlib.\n",
      " |  \n",
      " |  idxmax(self, axis=0, skipna=True, *args, **kwargs)\n",
      " |      Return the row label of the maximum value.\n",
      " |      \n",
      " |      If multiple values equal the maximum, the first row label with that\n",
      " |      value is returned.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If the entire Series is NA, the result\n",
      " |          will be NA.\n",
      " |      axis : int, default 0\n",
      " |          For compatibility with DataFrame.idxmax. Redundant for application\n",
      " |          on Series.\n",
      " |      *args, **kwargs\n",
      " |          Additional keywords have no effect but might be accepted\n",
      " |          for compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      idxmax : Index of maximum of values.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError\n",
      " |          If the Series is empty.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.argmax : Return indices of the maximum values\n",
      " |          along the given axis.\n",
      " |      DataFrame.idxmax : Return index of first occurrence of maximum\n",
      " |          over requested axis.\n",
      " |      Series.idxmin : Return index *label* of the first occurrence\n",
      " |          of minimum of values.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This method is the Series version of ``ndarray.argmax``. This method\n",
      " |      returns the label of the maximum, while ``ndarray.argmax`` returns\n",
      " |      the position. To get the position, use ``series.values.argmax()``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(data=[1, None, 4, 3, 4],\n",
      " |      ...               index=['A', 'B', 'C', 'D', 'E'])\n",
      " |      >>> s\n",
      " |      A    1.0\n",
      " |      B    NaN\n",
      " |      C    4.0\n",
      " |      D    3.0\n",
      " |      E    4.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.idxmax()\n",
      " |      'C'\n",
      " |      \n",
      " |      If `skipna` is False and there is an NA value in the data,\n",
      " |      the function returns ``nan``.\n",
      " |      \n",
      " |      >>> s.idxmax(skipna=False)\n",
      " |      nan\n",
      " |  \n",
      " |  idxmin(self, axis=0, skipna=True, *args, **kwargs)\n",
      " |      Return the row label of the minimum value.\n",
      " |      \n",
      " |      If multiple values equal the minimum, the first row label with that\n",
      " |      value is returned.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If the entire Series is NA, the result\n",
      " |          will be NA.\n",
      " |      axis : int, default 0\n",
      " |          For compatibility with DataFrame.idxmin. Redundant for application\n",
      " |          on Series.\n",
      " |      *args, **kwargs\n",
      " |          Additional keywords have no effect but might be accepted\n",
      " |          for compatibility with NumPy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      idxmin : Index of minimum of values.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError\n",
      " |          If the Series is empty.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.argmin : Return indices of the minimum values\n",
      " |          along the given axis.\n",
      " |      DataFrame.idxmin : Return index of first occurrence of minimum\n",
      " |          over requested axis.\n",
      " |      Series.idxmax : Return index *label* of the first occurrence\n",
      " |          of maximum of values.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This method is the Series version of ``ndarray.argmin``. This method\n",
      " |      returns the label of the minimum, while ``ndarray.argmin`` returns\n",
      " |      the position. To get the position, use ``series.values.argmin()``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(data=[1, None, 4, 1],\n",
      " |      ...               index=['A' ,'B' ,'C' ,'D'])\n",
      " |      >>> s\n",
      " |      A    1.0\n",
      " |      B    NaN\n",
      " |      C    4.0\n",
      " |      D    1.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.idxmin()\n",
      " |      'A'\n",
      " |      \n",
      " |      If `skipna` is False and there is an NA value in the data,\n",
      " |      the function returns ``nan``.\n",
      " |      \n",
      " |      >>> s.idxmin(skipna=False)\n",
      " |      nan\n",
      " |  \n",
      " |  isin(self, values)\n",
      " |      Check whether `values` are contained in Series.\n",
      " |      \n",
      " |      Return a boolean Series showing whether each element in the Series\n",
      " |      matches an element in the passed sequence of `values` exactly.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      values : set or list-like\n",
      " |          The sequence of values to test. Passing in a single string will\n",
      " |          raise a ``TypeError``. Instead, turn a single string into a\n",
      " |          list of one element.\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |      \n",
      " |            Support for values as a set.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      isin : Series (bool dtype)\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |        * If `values` is a string\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.isin : Equivalent method on DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(['lama', 'cow', 'lama', 'beetle', 'lama',\n",
      " |      ...                'hippo'], name='animal')\n",
      " |      >>> s.isin(['cow', 'lama'])\n",
      " |      0     True\n",
      " |      1     True\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4     True\n",
      " |      5    False\n",
      " |      Name: animal, dtype: bool\n",
      " |      \n",
      " |      Passing a single string as ``s.isin('lama')`` will raise an error. Use\n",
      " |      a list of one element instead:\n",
      " |      \n",
      " |      >>> s.isin(['lama'])\n",
      " |      0     True\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      3    False\n",
      " |      4     True\n",
      " |      5    False\n",
      " |      Name: animal, dtype: bool\n",
      " |  \n",
      " |  isna(self)\n",
      " |      Detect missing values.\n",
      " |      \n",
      " |      Return a boolean same-sized object indicating if the values are NA.\n",
      " |      NA values, such as None or :attr:`numpy.NaN`, gets mapped to True\n",
      " |      values.\n",
      " |      Everything else gets mapped to False values. Characters such as empty\n",
      " |      strings ``''`` or :attr:`numpy.inf` are not considered NA values\n",
      " |      (unless you set ``pandas.options.mode.use_inf_as_na = True``).\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Mask of bool values for each element in Series that\n",
      " |          indicates whether an element is not an NA value.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.isnull : Alias of isna.\n",
      " |      Series.notna : Boolean inverse of isna.\n",
      " |      Series.dropna : Omit axes labels with missing values.\n",
      " |      isna : Top-level isna.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Show which entries in a DataFrame are NA.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'age': [5, 6, np.NaN],\n",
      " |      ...                    'born': [pd.NaT, pd.Timestamp('1939-05-27'),\n",
      " |      ...                             pd.Timestamp('1940-04-25')],\n",
      " |      ...                    'name': ['Alfred', 'Batman', ''],\n",
      " |      ...                    'toy': [None, 'Batmobile', 'Joker']})\n",
      " |      >>> df\n",
      " |         age       born    name        toy\n",
      " |      0  5.0        NaT  Alfred       None\n",
      " |      1  6.0 1939-05-27  Batman  Batmobile\n",
      " |      2  NaN 1940-04-25              Joker\n",
      " |      \n",
      " |      >>> df.isna()\n",
      " |           age   born   name    toy\n",
      " |      0  False   True  False   True\n",
      " |      1  False  False  False  False\n",
      " |      2   True  False  False  False\n",
      " |      \n",
      " |      Show which entries in a Series are NA.\n",
      " |      \n",
      " |      >>> ser = pd.Series([5, 6, np.NaN])\n",
      " |      >>> ser\n",
      " |      0    5.0\n",
      " |      1    6.0\n",
      " |      2    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> ser.isna()\n",
      " |      0    False\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  isnull(self)\n",
      " |      Detect missing values.\n",
      " |      \n",
      " |      Return a boolean same-sized object indicating if the values are NA.\n",
      " |      NA values, such as None or :attr:`numpy.NaN`, gets mapped to True\n",
      " |      values.\n",
      " |      Everything else gets mapped to False values. Characters such as empty\n",
      " |      strings ``''`` or :attr:`numpy.inf` are not considered NA values\n",
      " |      (unless you set ``pandas.options.mode.use_inf_as_na = True``).\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Mask of bool values for each element in Series that\n",
      " |          indicates whether an element is not an NA value.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.isnull : Alias of isna.\n",
      " |      Series.notna : Boolean inverse of isna.\n",
      " |      Series.dropna : Omit axes labels with missing values.\n",
      " |      isna : Top-level isna.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Show which entries in a DataFrame are NA.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'age': [5, 6, np.NaN],\n",
      " |      ...                    'born': [pd.NaT, pd.Timestamp('1939-05-27'),\n",
      " |      ...                             pd.Timestamp('1940-04-25')],\n",
      " |      ...                    'name': ['Alfred', 'Batman', ''],\n",
      " |      ...                    'toy': [None, 'Batmobile', 'Joker']})\n",
      " |      >>> df\n",
      " |         age       born    name        toy\n",
      " |      0  5.0        NaT  Alfred       None\n",
      " |      1  6.0 1939-05-27  Batman  Batmobile\n",
      " |      2  NaN 1940-04-25              Joker\n",
      " |      \n",
      " |      >>> df.isna()\n",
      " |           age   born   name    toy\n",
      " |      0  False   True  False   True\n",
      " |      1  False  False  False  False\n",
      " |      2   True  False  False  False\n",
      " |      \n",
      " |      Show which entries in a Series are NA.\n",
      " |      \n",
      " |      >>> ser = pd.Series([5, 6, np.NaN])\n",
      " |      >>> ser\n",
      " |      0    5.0\n",
      " |      1    6.0\n",
      " |      2    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> ser.isna()\n",
      " |      0    False\n",
      " |      1    False\n",
      " |      2     True\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  items = iteritems(self)\n",
      " |  \n",
      " |  iteritems(self)\n",
      " |      Lazily iterate over (index, value) tuples.\n",
      " |  \n",
      " |  keys(self)\n",
      " |      Alias for index.\n",
      " |  \n",
      " |  kurt(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return unbiased kurtosis over requested axis using Fisher's definition of\n",
      " |      kurtosis (kurtosis of normal == 0.0). Normalized by N-1.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      kurt : scalar or Series (if level specified)\n",
      " |  \n",
      " |  kurtosis = kurt(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |  \n",
      " |  le(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Less than or equal to of series and other, element-wise (binary operator `le`).\n",
      " |      \n",
      " |      Equivalent to ``series <= other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  lt(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Less than of series and other, element-wise (binary operator `lt`).\n",
      " |      \n",
      " |      Equivalent to ``series < other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  mad(self, axis=None, skipna=None, level=None)\n",
      " |      Return the mean absolute deviation of the values for the requested axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      mad : scalar or Series (if level specified)\n",
      " |  \n",
      " |  map(self, arg, na_action=None)\n",
      " |      Map values of Series according to input correspondence.\n",
      " |      \n",
      " |      Used for substituting each value in a Series with another value,\n",
      " |      that may be derived from a function, a ``dict`` or\n",
      " |      a :class:`Series`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      arg : function, dict, or Series\n",
      " |          Mapping correspondence.\n",
      " |      na_action : {None, 'ignore'}, default None\n",
      " |          If 'ignore', propagate NaN values, without passing them to the\n",
      " |          mapping correspondence.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Same index as caller.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.apply : For applying more complex functions on a Series.\n",
      " |      DataFrame.apply : Apply a function row-/column-wise.\n",
      " |      DataFrame.applymap : Apply a function elementwise on a whole DataFrame.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      When ``arg`` is a dictionary, values in Series that are not in the\n",
      " |      dictionary (as keys) are converted to ``NaN``. However, if the\n",
      " |      dictionary is a ``dict`` subclass that defines ``__missing__`` (i.e.\n",
      " |      provides a method for default values), then this default is used\n",
      " |      rather than ``NaN``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(['cat', 'dog', np.nan, 'rabbit'])\n",
      " |      >>> s\n",
      " |      0      cat\n",
      " |      1      dog\n",
      " |      2      NaN\n",
      " |      3   rabbit\n",
      " |      dtype: object\n",
      " |      \n",
      " |      ``map`` accepts a ``dict`` or a ``Series``. Values that are not found\n",
      " |      in the ``dict`` are converted to ``NaN``, unless the dict has a default\n",
      " |      value (e.g. ``defaultdict``):\n",
      " |      \n",
      " |      >>> s.map({'cat': 'kitten', 'dog': 'puppy'})\n",
      " |      0   kitten\n",
      " |      1    puppy\n",
      " |      2      NaN\n",
      " |      3      NaN\n",
      " |      dtype: object\n",
      " |      \n",
      " |      It also accepts a function:\n",
      " |      \n",
      " |      >>> s.map('I am a {}'.format)\n",
      " |      0       I am a cat\n",
      " |      1       I am a dog\n",
      " |      2       I am a nan\n",
      " |      3    I am a rabbit\n",
      " |      dtype: object\n",
      " |      \n",
      " |      To avoid applying the function to missing values (and keep them as\n",
      " |      ``NaN``) ``na_action='ignore'`` can be used:\n",
      " |      \n",
      " |      >>> s.map('I am a {}'.format, na_action='ignore')\n",
      " |      0     I am a cat\n",
      " |      1     I am a dog\n",
      " |      2            NaN\n",
      " |      3  I am a rabbit\n",
      " |      dtype: object\n",
      " |  \n",
      " |  max(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return the maximum of the values for the requested axis.\n",
      " |      \n",
      " |                  If you want the *index* of the maximum, use ``idxmax``. This is\n",
      " |                  the equivalent of the ``numpy.ndarray`` method ``argmax``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      max : scalar or Series (if level specified)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.sum : Return the sum.\n",
      " |      Series.min : Return the minimum.\n",
      " |      Series.max : Return the maximum.\n",
      " |      Series.idxmin : Return the index of the minimum.\n",
      " |      Series.idxmax : Return the index of the maximum.\n",
      " |      DataFrame.min : Return the sum over the requested axis.\n",
      " |      DataFrame.min : Return the minimum over the requested axis.\n",
      " |      DataFrame.max : Return the maximum over the requested axis.\n",
      " |      DataFrame.idxmin : Return the index of the minimum over the requested axis.\n",
      " |      DataFrame.idxmax : Return the index of the maximum over the requested axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> idx = pd.MultiIndex.from_arrays([\n",
      " |      ...     ['warm', 'warm', 'cold', 'cold'],\n",
      " |      ...     ['dog', 'falcon', 'fish', 'spider']],\n",
      " |      ...     names=['blooded', 'animal'])\n",
      " |      >>> s = pd.Series([4, 2, 0, 8], name='legs', index=idx)\n",
      " |      >>> s\n",
      " |      blooded  animal\n",
      " |      warm     dog       4\n",
      " |               falcon    2\n",
      " |      cold     fish      0\n",
      " |               spider    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.max()\n",
      " |      8\n",
      " |      \n",
      " |      Max using level names, as well as indices.\n",
      " |      \n",
      " |      >>> s.max(level='blooded')\n",
      " |      blooded\n",
      " |      warm    4\n",
      " |      cold    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.max(level=0)\n",
      " |      blooded\n",
      " |      warm    4\n",
      " |      cold    8\n",
      " |      Name: legs, dtype: int64\n",
      " |  \n",
      " |  mean(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return the mean of the values for the requested axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      mean : scalar or Series (if level specified)\n",
      " |  \n",
      " |  median(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return the median of the values for the requested axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      median : scalar or Series (if level specified)\n",
      " |  \n",
      " |  memory_usage(self, index=True, deep=False)\n",
      " |      Return the memory usage of the Series.\n",
      " |      \n",
      " |      The memory usage can optionally include the contribution of\n",
      " |      the index and of elements of `object` dtype.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      index : bool, default True\n",
      " |          Specifies whether to include the memory usage of the Series index.\n",
      " |      deep : bool, default False\n",
      " |          If True, introspect the data deeply by interrogating\n",
      " |          `object` dtypes for system-level memory consumption, and include\n",
      " |          it in the returned value.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      int\n",
      " |          Bytes of memory consumed.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.nbytes : Total bytes consumed by the elements of the\n",
      " |          array.\n",
      " |      DataFrame.memory_usage : Bytes consumed by a DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(range(3))\n",
      " |      >>> s.memory_usage()\n",
      " |      104\n",
      " |      \n",
      " |      Not including the index gives the size of the rest of the data, which\n",
      " |      is necessarily smaller:\n",
      " |      \n",
      " |      >>> s.memory_usage(index=False)\n",
      " |      24\n",
      " |      \n",
      " |      The memory footprint of `object` values is ignored by default:\n",
      " |      \n",
      " |      >>> s = pd.Series([\"a\", \"b\"])\n",
      " |      >>> s.values\n",
      " |      array(['a', 'b'], dtype=object)\n",
      " |      >>> s.memory_usage()\n",
      " |      96\n",
      " |      >>> s.memory_usage(deep=True)\n",
      " |      212\n",
      " |  \n",
      " |  min(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return the minimum of the values for the requested axis.\n",
      " |      \n",
      " |                  If you want the *index* of the minimum, use ``idxmin``. This is\n",
      " |                  the equivalent of the ``numpy.ndarray`` method ``argmin``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      min : scalar or Series (if level specified)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.sum : Return the sum.\n",
      " |      Series.min : Return the minimum.\n",
      " |      Series.max : Return the maximum.\n",
      " |      Series.idxmin : Return the index of the minimum.\n",
      " |      Series.idxmax : Return the index of the maximum.\n",
      " |      DataFrame.min : Return the sum over the requested axis.\n",
      " |      DataFrame.min : Return the minimum over the requested axis.\n",
      " |      DataFrame.max : Return the maximum over the requested axis.\n",
      " |      DataFrame.idxmin : Return the index of the minimum over the requested axis.\n",
      " |      DataFrame.idxmax : Return the index of the maximum over the requested axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> idx = pd.MultiIndex.from_arrays([\n",
      " |      ...     ['warm', 'warm', 'cold', 'cold'],\n",
      " |      ...     ['dog', 'falcon', 'fish', 'spider']],\n",
      " |      ...     names=['blooded', 'animal'])\n",
      " |      >>> s = pd.Series([4, 2, 0, 8], name='legs', index=idx)\n",
      " |      >>> s\n",
      " |      blooded  animal\n",
      " |      warm     dog       4\n",
      " |               falcon    2\n",
      " |      cold     fish      0\n",
      " |               spider    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.min()\n",
      " |      0\n",
      " |      \n",
      " |      Min using level names, as well as indices.\n",
      " |      \n",
      " |      >>> s.min(level='blooded')\n",
      " |      blooded\n",
      " |      warm    2\n",
      " |      cold    0\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.min(level=0)\n",
      " |      blooded\n",
      " |      warm    2\n",
      " |      cold    0\n",
      " |      Name: legs, dtype: int64\n",
      " |  \n",
      " |  mod(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Modulo of series and other, element-wise (binary operator `mod`).\n",
      " |      \n",
      " |      Equivalent to ``series % other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rmod\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  mode(self, dropna=True)\n",
      " |      Return the mode(s) of the dataset.\n",
      " |      \n",
      " |      Always returns Series even if only one value is returned.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dropna : boolean, default True\n",
      " |          Don't consider counts of NaN/NaT.\n",
      " |      \n",
      " |          .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      modes : Series (sorted)\n",
      " |  \n",
      " |  mul(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Multiplication of series and other, element-wise (binary operator `mul`).\n",
      " |      \n",
      " |      Equivalent to ``series * other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rmul\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  multiply = mul(self, other, level=None, fill_value=None, axis=0)\n",
      " |  \n",
      " |  ne(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Not equal to of series and other, element-wise (binary operator `ne`).\n",
      " |      \n",
      " |      Equivalent to ``series != other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.None\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  nlargest(self, n=5, keep='first')\n",
      " |      Return the largest `n` elements.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      n : int, default 5\n",
      " |          Return this many descending sorted values.\n",
      " |      keep : {'first', 'last', 'all'}, default 'first'\n",
      " |          When there are duplicate values that cannot all fit in a\n",
      " |          Series of `n` elements:\n",
      " |      \n",
      " |          - ``first`` : take the first occurrences based on the index order\n",
      " |          - ``last`` : take the last occurrences based on the index order\n",
      " |          - ``all`` : keep all occurrences. This can result in a Series of\n",
      " |              size larger than `n`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          The `n` largest values in the Series, sorted in decreasing order.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.nsmallest: Get the `n` smallest elements.\n",
      " |      Series.sort_values: Sort Series by values.\n",
      " |      Series.head: Return the first `n` rows.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Faster than ``.sort_values(ascending=False).head(n)`` for small `n`\n",
      " |      relative to the size of the ``Series`` object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> countries_population = {\"Italy\": 59000000, \"France\": 65000000,\n",
      " |      ...                         \"Malta\": 434000, \"Maldives\": 434000,\n",
      " |      ...                         \"Brunei\": 434000, \"Iceland\": 337000,\n",
      " |      ...                         \"Nauru\": 11300, \"Tuvalu\": 11300,\n",
      " |      ...                         \"Anguilla\": 11300, \"Monserat\": 5200}\n",
      " |      >>> s = pd.Series(countries_population)\n",
      " |      >>> s\n",
      " |      Italy       59000000\n",
      " |      France      65000000\n",
      " |      Malta         434000\n",
      " |      Maldives      434000\n",
      " |      Brunei        434000\n",
      " |      Iceland       337000\n",
      " |      Nauru          11300\n",
      " |      Tuvalu         11300\n",
      " |      Anguilla       11300\n",
      " |      Monserat        5200\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` largest elements where ``n=5`` by default.\n",
      " |      \n",
      " |      >>> s.nlargest()\n",
      " |      France      65000000\n",
      " |      Italy       59000000\n",
      " |      Malta         434000\n",
      " |      Maldives      434000\n",
      " |      Brunei        434000\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` largest elements where ``n=3``. Default `keep` value is 'first'\n",
      " |      so Malta will be kept.\n",
      " |      \n",
      " |      >>> s.nlargest(3)\n",
      " |      France    65000000\n",
      " |      Italy     59000000\n",
      " |      Malta       434000\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` largest elements where ``n=3`` and keeping the last duplicates.\n",
      " |      Brunei will be kept since it is the last with value 434000 based on\n",
      " |      the index order.\n",
      " |      \n",
      " |      >>> s.nlargest(3, keep='last')\n",
      " |      France      65000000\n",
      " |      Italy       59000000\n",
      " |      Brunei        434000\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` largest elements where ``n=3`` with all duplicates kept. Note\n",
      " |      that the returned Series has five elements due to the three duplicates.\n",
      " |      \n",
      " |      >>> s.nlargest(3, keep='all')\n",
      " |      France      65000000\n",
      " |      Italy       59000000\n",
      " |      Malta         434000\n",
      " |      Maldives      434000\n",
      " |      Brunei        434000\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  nonzero(self)\n",
      " |      Return the *integer* indices of the elements that are non-zero.\n",
      " |      \n",
      " |      .. deprecated:: 0.24.0\n",
      " |         Please use .to_numpy().nonzero() as a replacement.\n",
      " |      \n",
      " |      This method is equivalent to calling `numpy.nonzero` on the\n",
      " |      series data. For compatibility with NumPy, the return value is\n",
      " |      the same (a tuple with an array of indices for each dimension),\n",
      " |      but it will always be a one-item tuple because series only have\n",
      " |      one dimension.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.nonzero\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([0, 3, 0, 4])\n",
      " |      >>> s.nonzero()\n",
      " |      (array([1, 3]),)\n",
      " |      >>> s.iloc[s.nonzero()[0]]\n",
      " |      1    3\n",
      " |      3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s = pd.Series([0, 3, 0, 4], index=['a', 'b', 'c', 'd'])\n",
      " |      # same return although index of s is different\n",
      " |      >>> s.nonzero()\n",
      " |      (array([1, 3]),)\n",
      " |      >>> s.iloc[s.nonzero()[0]]\n",
      " |      b    3\n",
      " |      d    4\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  notna(self)\n",
      " |      Detect existing (non-missing) values.\n",
      " |      \n",
      " |      Return a boolean same-sized object indicating if the values are not NA.\n",
      " |      Non-missing values get mapped to True. Characters such as empty\n",
      " |      strings ``''`` or :attr:`numpy.inf` are not considered NA values\n",
      " |      (unless you set ``pandas.options.mode.use_inf_as_na = True``).\n",
      " |      NA values, such as None or :attr:`numpy.NaN`, get mapped to False\n",
      " |      values.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Mask of bool values for each element in Series that\n",
      " |          indicates whether an element is not an NA value.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.notnull : Alias of notna.\n",
      " |      Series.isna : Boolean inverse of notna.\n",
      " |      Series.dropna : Omit axes labels with missing values.\n",
      " |      notna : Top-level notna.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Show which entries in a DataFrame are not NA.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'age': [5, 6, np.NaN],\n",
      " |      ...                    'born': [pd.NaT, pd.Timestamp('1939-05-27'),\n",
      " |      ...                             pd.Timestamp('1940-04-25')],\n",
      " |      ...                    'name': ['Alfred', 'Batman', ''],\n",
      " |      ...                    'toy': [None, 'Batmobile', 'Joker']})\n",
      " |      >>> df\n",
      " |         age       born    name        toy\n",
      " |      0  5.0        NaT  Alfred       None\n",
      " |      1  6.0 1939-05-27  Batman  Batmobile\n",
      " |      2  NaN 1940-04-25              Joker\n",
      " |      \n",
      " |      >>> df.notna()\n",
      " |           age   born  name    toy\n",
      " |      0   True  False  True  False\n",
      " |      1   True   True  True   True\n",
      " |      2  False   True  True   True\n",
      " |      \n",
      " |      Show which entries in a Series are not NA.\n",
      " |      \n",
      " |      >>> ser = pd.Series([5, 6, np.NaN])\n",
      " |      >>> ser\n",
      " |      0    5.0\n",
      " |      1    6.0\n",
      " |      2    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> ser.notna()\n",
      " |      0     True\n",
      " |      1     True\n",
      " |      2    False\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  notnull(self)\n",
      " |      Detect existing (non-missing) values.\n",
      " |      \n",
      " |      Return a boolean same-sized object indicating if the values are not NA.\n",
      " |      Non-missing values get mapped to True. Characters such as empty\n",
      " |      strings ``''`` or :attr:`numpy.inf` are not considered NA values\n",
      " |      (unless you set ``pandas.options.mode.use_inf_as_na = True``).\n",
      " |      NA values, such as None or :attr:`numpy.NaN`, get mapped to False\n",
      " |      values.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Mask of bool values for each element in Series that\n",
      " |          indicates whether an element is not an NA value.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.notnull : Alias of notna.\n",
      " |      Series.isna : Boolean inverse of notna.\n",
      " |      Series.dropna : Omit axes labels with missing values.\n",
      " |      notna : Top-level notna.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Show which entries in a DataFrame are not NA.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'age': [5, 6, np.NaN],\n",
      " |      ...                    'born': [pd.NaT, pd.Timestamp('1939-05-27'),\n",
      " |      ...                             pd.Timestamp('1940-04-25')],\n",
      " |      ...                    'name': ['Alfred', 'Batman', ''],\n",
      " |      ...                    'toy': [None, 'Batmobile', 'Joker']})\n",
      " |      >>> df\n",
      " |         age       born    name        toy\n",
      " |      0  5.0        NaT  Alfred       None\n",
      " |      1  6.0 1939-05-27  Batman  Batmobile\n",
      " |      2  NaN 1940-04-25              Joker\n",
      " |      \n",
      " |      >>> df.notna()\n",
      " |           age   born  name    toy\n",
      " |      0   True  False  True  False\n",
      " |      1   True   True  True   True\n",
      " |      2  False   True  True   True\n",
      " |      \n",
      " |      Show which entries in a Series are not NA.\n",
      " |      \n",
      " |      >>> ser = pd.Series([5, 6, np.NaN])\n",
      " |      >>> ser\n",
      " |      0    5.0\n",
      " |      1    6.0\n",
      " |      2    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> ser.notna()\n",
      " |      0     True\n",
      " |      1     True\n",
      " |      2    False\n",
      " |      dtype: bool\n",
      " |  \n",
      " |  nsmallest(self, n=5, keep='first')\n",
      " |      Return the smallest `n` elements.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      n : int, default 5\n",
      " |          Return this many ascending sorted values.\n",
      " |      keep : {'first', 'last', 'all'}, default 'first'\n",
      " |          When there are duplicate values that cannot all fit in a\n",
      " |          Series of `n` elements:\n",
      " |      \n",
      " |          - ``first`` : take the first occurrences based on the index order\n",
      " |          - ``last`` : take the last occurrences based on the index order\n",
      " |          - ``all`` : keep all occurrences. This can result in a Series of\n",
      " |              size larger than `n`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          The `n` smallest values in the Series, sorted in increasing order.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.nlargest: Get the `n` largest elements.\n",
      " |      Series.sort_values: Sort Series by values.\n",
      " |      Series.head: Return the first `n` rows.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Faster than ``.sort_values().head(n)`` for small `n` relative to\n",
      " |      the size of the ``Series`` object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> countries_population = {\"Italy\": 59000000, \"France\": 65000000,\n",
      " |      ...                         \"Brunei\": 434000, \"Malta\": 434000,\n",
      " |      ...                         \"Maldives\": 434000, \"Iceland\": 337000,\n",
      " |      ...                         \"Nauru\": 11300, \"Tuvalu\": 11300,\n",
      " |      ...                         \"Anguilla\": 11300, \"Monserat\": 5200}\n",
      " |      >>> s = pd.Series(countries_population)\n",
      " |      >>> s\n",
      " |      Italy       59000000\n",
      " |      France      65000000\n",
      " |      Brunei        434000\n",
      " |      Malta         434000\n",
      " |      Maldives      434000\n",
      " |      Iceland       337000\n",
      " |      Nauru          11300\n",
      " |      Tuvalu         11300\n",
      " |      Anguilla       11300\n",
      " |      Monserat        5200\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` largest elements where ``n=5`` by default.\n",
      " |      \n",
      " |      >>> s.nsmallest()\n",
      " |      Monserat      5200\n",
      " |      Nauru        11300\n",
      " |      Tuvalu       11300\n",
      " |      Anguilla     11300\n",
      " |      Iceland     337000\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` smallest elements where ``n=3``. Default `keep` value is\n",
      " |      'first' so Nauru and Tuvalu will be kept.\n",
      " |      \n",
      " |      >>> s.nsmallest(3)\n",
      " |      Monserat     5200\n",
      " |      Nauru       11300\n",
      " |      Tuvalu      11300\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` smallest elements where ``n=3`` and keeping the last\n",
      " |      duplicates. Anguilla and Tuvalu will be kept since they are the last\n",
      " |      with value 11300 based on the index order.\n",
      " |      \n",
      " |      >>> s.nsmallest(3, keep='last')\n",
      " |      Monserat     5200\n",
      " |      Anguilla    11300\n",
      " |      Tuvalu      11300\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The `n` smallest elements where ``n=3`` with all duplicates kept. Note\n",
      " |      that the returned Series has four elements due to the three duplicates.\n",
      " |      \n",
      " |      >>> s.nsmallest(3, keep='all')\n",
      " |      Monserat     5200\n",
      " |      Nauru       11300\n",
      " |      Tuvalu      11300\n",
      " |      Anguilla    11300\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  pow(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Exponential power of series and other, element-wise (binary operator `pow`).\n",
      " |      \n",
      " |      Equivalent to ``series ** other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rpow\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  prod(self, axis=None, skipna=None, level=None, numeric_only=None, min_count=0, **kwargs)\n",
      " |      Return the product of the values for the requested axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      min_count : int, default 0\n",
      " |          The required number of valid values to perform the operation. If fewer than\n",
      " |          ``min_count`` non-NA values are present the result will be NA.\n",
      " |      \n",
      " |          .. versionadded :: 0.22.0\n",
      " |      \n",
      " |             Added with the default being 0. This means the sum of an all-NA\n",
      " |             or empty Series is 0, and the product of an all-NA or empty\n",
      " |             Series is 1.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      prod : scalar or Series (if level specified)\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      By default, the product of an empty or all-NA Series is ``1``\n",
      " |      \n",
      " |      >>> pd.Series([]).prod()\n",
      " |      1.0\n",
      " |      \n",
      " |      This can be controlled with the ``min_count`` parameter\n",
      " |      \n",
      " |      >>> pd.Series([]).prod(min_count=1)\n",
      " |      nan\n",
      " |      \n",
      " |      Thanks to the ``skipna`` parameter, ``min_count`` handles all-NA and\n",
      " |      empty series identically.\n",
      " |      \n",
      " |      >>> pd.Series([np.nan]).prod()\n",
      " |      1.0\n",
      " |      \n",
      " |      >>> pd.Series([np.nan]).prod(min_count=1)\n",
      " |      nan\n",
      " |  \n",
      " |  product = prod(self, axis=None, skipna=None, level=None, numeric_only=None, min_count=0, **kwargs)\n",
      " |  \n",
      " |  ptp(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Returns the difference between the maximum value and the\n",
      " |                  minimum value in the object. This is the equivalent of the\n",
      " |                  ``numpy.ndarray`` method ``ptp``.\n",
      " |      \n",
      " |      .. deprecated:: 0.24.0\n",
      " |                      Use numpy.ptp instead\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      ptp : scalar or Series (if level specified)\n",
      " |  \n",
      " |  put(self, *args, **kwargs)\n",
      " |      Applies the `put` method to its `values` attribute if it has one.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.put\n",
      " |  \n",
      " |  quantile(self, q=0.5, interpolation='linear')\n",
      " |      Return value at the given quantile.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      q : float or array-like, default 0.5 (50% quantile)\n",
      " |          0 <= q <= 1, the quantile(s) to compute\n",
      " |      interpolation : {'linear', 'lower', 'higher', 'midpoint', 'nearest'}\n",
      " |          .. versionadded:: 0.18.0\n",
      " |      \n",
      " |          This optional parameter specifies the interpolation method to use,\n",
      " |          when the desired quantile lies between two data points `i` and `j`:\n",
      " |      \n",
      " |              * linear: `i + (j - i) * fraction`, where `fraction` is the\n",
      " |                fractional part of the index surrounded by `i` and `j`.\n",
      " |              * lower: `i`.\n",
      " |              * higher: `j`.\n",
      " |              * nearest: `i` or `j` whichever is nearest.\n",
      " |              * midpoint: (`i` + `j`) / 2.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      quantile : float or Series\n",
      " |          if ``q`` is an array, a Series will be returned where the\n",
      " |          index is ``q`` and the values are the quantiles.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      core.window.Rolling.quantile\n",
      " |      numpy.percentile\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s.quantile(.5)\n",
      " |      2.5\n",
      " |      >>> s.quantile([.25, .5, .75])\n",
      " |      0.25    1.75\n",
      " |      0.50    2.50\n",
      " |      0.75    3.25\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  radd(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Addition of series and other, element-wise (binary operator `radd`).\n",
      " |      \n",
      " |      Equivalent to ``other + series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.add\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  ravel(self, order='C')\n",
      " |      Return the flattened underlying data as an ndarray.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.ravel\n",
      " |  \n",
      " |  rdiv = rtruediv(self, other, level=None, fill_value=None, axis=0)\n",
      " |  \n",
      " |  rdivmod(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Integer division and modulo of series and other, element-wise (binary operator `rdivmod`).\n",
      " |      \n",
      " |      Equivalent to ``other divmod series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.divmod\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  reindex(self, index=None, **kwargs)\n",
      " |      Conform Series to new index with optional filling logic, placing\n",
      " |      NA/NaN in locations having no value in the previous index. A new object\n",
      " |      is produced unless the new index is equivalent to the current one and\n",
      " |      ``copy=False``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      \n",
      " |      index : array-like, optional\n",
      " |          New labels / index to conform to, should be specified using\n",
      " |          keywords. Preferably an Index object to avoid duplicating data\n",
      " |      \n",
      " |      method : {None, 'backfill'/'bfill', 'pad'/'ffill', 'nearest'}\n",
      " |          Method to use for filling holes in reindexed DataFrame.\n",
      " |          Please note: this is only applicable to DataFrames/Series with a\n",
      " |          monotonically increasing/decreasing index.\n",
      " |      \n",
      " |          * None (default): don't fill gaps\n",
      " |          * pad / ffill: propagate last valid observation forward to next\n",
      " |            valid\n",
      " |          * backfill / bfill: use next valid observation to fill gap\n",
      " |          * nearest: use nearest valid observations to fill gap\n",
      " |      \n",
      " |      copy : bool, default True\n",
      " |          Return a new object, even if the passed indexes are the same.\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level.\n",
      " |      fill_value : scalar, default np.NaN\n",
      " |          Value to use for missing values. Defaults to NaN, but can be any\n",
      " |          \"compatible\" value.\n",
      " |      limit : int, default None\n",
      " |          Maximum number of consecutive elements to forward or backward fill.\n",
      " |      tolerance : optional\n",
      " |          Maximum distance between original and new labels for inexact\n",
      " |          matches. The values of the index at the matching locations most\n",
      " |          satisfy the equation ``abs(index[indexer] - target) <= tolerance``.\n",
      " |      \n",
      " |          Tolerance may be a scalar value, which applies the same tolerance\n",
      " |          to all values, or list-like, which applies variable tolerance per\n",
      " |          element. List-like includes list, tuple, array, Series, and must be\n",
      " |          the same size as the index and its dtype must exactly match the\n",
      " |          index's type.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0 (list-like tolerance)\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series with changed index.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.set_index : Set row labels.\n",
      " |      DataFrame.reset_index : Remove row labels or move them to new columns.\n",
      " |      DataFrame.reindex_like : Change to same indices as other DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      ``DataFrame.reindex`` supports two calling conventions\n",
      " |      \n",
      " |      * ``(index=index_labels, columns=column_labels, ...)``\n",
      " |      * ``(labels, axis={'index', 'columns'}, ...)``\n",
      " |      \n",
      " |      We *highly* recommend using keyword arguments to clarify your\n",
      " |      intent.\n",
      " |      \n",
      " |      Create a dataframe with some fictional data.\n",
      " |      \n",
      " |      >>> index = ['Firefox', 'Chrome', 'Safari', 'IE10', 'Konqueror']\n",
      " |      >>> df = pd.DataFrame({\n",
      " |      ...      'http_status': [200,200,404,404,301],\n",
      " |      ...      'response_time': [0.04, 0.02, 0.07, 0.08, 1.0]},\n",
      " |      ...       index=index)\n",
      " |      >>> df\n",
      " |                 http_status  response_time\n",
      " |      Firefox            200           0.04\n",
      " |      Chrome             200           0.02\n",
      " |      Safari             404           0.07\n",
      " |      IE10               404           0.08\n",
      " |      Konqueror          301           1.00\n",
      " |      \n",
      " |      Create a new index and reindex the dataframe. By default\n",
      " |      values in the new index that do not have corresponding\n",
      " |      records in the dataframe are assigned ``NaN``.\n",
      " |      \n",
      " |      >>> new_index= ['Safari', 'Iceweasel', 'Comodo Dragon', 'IE10',\n",
      " |      ...             'Chrome']\n",
      " |      >>> df.reindex(new_index)\n",
      " |                     http_status  response_time\n",
      " |      Safari               404.0           0.07\n",
      " |      Iceweasel              NaN            NaN\n",
      " |      Comodo Dragon          NaN            NaN\n",
      " |      IE10                 404.0           0.08\n",
      " |      Chrome               200.0           0.02\n",
      " |      \n",
      " |      We can fill in the missing values by passing a value to\n",
      " |      the keyword ``fill_value``. Because the index is not monotonically\n",
      " |      increasing or decreasing, we cannot use arguments to the keyword\n",
      " |      ``method`` to fill the ``NaN`` values.\n",
      " |      \n",
      " |      >>> df.reindex(new_index, fill_value=0)\n",
      " |                     http_status  response_time\n",
      " |      Safari                 404           0.07\n",
      " |      Iceweasel                0           0.00\n",
      " |      Comodo Dragon            0           0.00\n",
      " |      IE10                   404           0.08\n",
      " |      Chrome                 200           0.02\n",
      " |      \n",
      " |      >>> df.reindex(new_index, fill_value='missing')\n",
      " |                    http_status response_time\n",
      " |      Safari                404          0.07\n",
      " |      Iceweasel         missing       missing\n",
      " |      Comodo Dragon     missing       missing\n",
      " |      IE10                  404          0.08\n",
      " |      Chrome                200          0.02\n",
      " |      \n",
      " |      We can also reindex the columns.\n",
      " |      \n",
      " |      >>> df.reindex(columns=['http_status', 'user_agent'])\n",
      " |                 http_status  user_agent\n",
      " |      Firefox            200         NaN\n",
      " |      Chrome             200         NaN\n",
      " |      Safari             404         NaN\n",
      " |      IE10               404         NaN\n",
      " |      Konqueror          301         NaN\n",
      " |      \n",
      " |      Or we can use \"axis-style\" keyword arguments\n",
      " |      \n",
      " |      >>> df.reindex(['http_status', 'user_agent'], axis=\"columns\")\n",
      " |                 http_status  user_agent\n",
      " |      Firefox            200         NaN\n",
      " |      Chrome             200         NaN\n",
      " |      Safari             404         NaN\n",
      " |      IE10               404         NaN\n",
      " |      Konqueror          301         NaN\n",
      " |      \n",
      " |      To further illustrate the filling functionality in\n",
      " |      ``reindex``, we will create a dataframe with a\n",
      " |      monotonically increasing index (for example, a sequence\n",
      " |      of dates).\n",
      " |      \n",
      " |      >>> date_index = pd.date_range('1/1/2010', periods=6, freq='D')\n",
      " |      >>> df2 = pd.DataFrame({\"prices\": [100, 101, np.nan, 100, 89, 88]},\n",
      " |      ...                    index=date_index)\n",
      " |      >>> df2\n",
      " |                  prices\n",
      " |      2010-01-01   100.0\n",
      " |      2010-01-02   101.0\n",
      " |      2010-01-03     NaN\n",
      " |      2010-01-04   100.0\n",
      " |      2010-01-05    89.0\n",
      " |      2010-01-06    88.0\n",
      " |      \n",
      " |      Suppose we decide to expand the dataframe to cover a wider\n",
      " |      date range.\n",
      " |      \n",
      " |      >>> date_index2 = pd.date_range('12/29/2009', periods=10, freq='D')\n",
      " |      >>> df2.reindex(date_index2)\n",
      " |                  prices\n",
      " |      2009-12-29     NaN\n",
      " |      2009-12-30     NaN\n",
      " |      2009-12-31     NaN\n",
      " |      2010-01-01   100.0\n",
      " |      2010-01-02   101.0\n",
      " |      2010-01-03     NaN\n",
      " |      2010-01-04   100.0\n",
      " |      2010-01-05    89.0\n",
      " |      2010-01-06    88.0\n",
      " |      2010-01-07     NaN\n",
      " |      \n",
      " |      The index entries that did not have a value in the original data frame\n",
      " |      (for example, '2009-12-29') are by default filled with ``NaN``.\n",
      " |      If desired, we can fill in the missing values using one of several\n",
      " |      options.\n",
      " |      \n",
      " |      For example, to back-propagate the last valid value to fill the ``NaN``\n",
      " |      values, pass ``bfill`` as an argument to the ``method`` keyword.\n",
      " |      \n",
      " |      >>> df2.reindex(date_index2, method='bfill')\n",
      " |                  prices\n",
      " |      2009-12-29   100.0\n",
      " |      2009-12-30   100.0\n",
      " |      2009-12-31   100.0\n",
      " |      2010-01-01   100.0\n",
      " |      2010-01-02   101.0\n",
      " |      2010-01-03     NaN\n",
      " |      2010-01-04   100.0\n",
      " |      2010-01-05    89.0\n",
      " |      2010-01-06    88.0\n",
      " |      2010-01-07     NaN\n",
      " |      \n",
      " |      Please note that the ``NaN`` value present in the original dataframe\n",
      " |      (at index value 2010-01-03) will not be filled by any of the\n",
      " |      value propagation schemes. This is because filling while reindexing\n",
      " |      does not look at dataframe values, but only compares the original and\n",
      " |      desired indexes. If you do want to fill in the ``NaN`` values present\n",
      " |      in the original dataframe, use the ``fillna()`` method.\n",
      " |      \n",
      " |      See the :ref:`user guide <basics.reindexing>` for more.\n",
      " |  \n",
      " |  reindex_axis(self, labels, axis=0, **kwargs)\n",
      " |      Conform Series to new index with optional filling logic.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          Use ``Series.reindex`` instead.\n",
      " |  \n",
      " |  rename(self, index=None, **kwargs)\n",
      " |      Alter Series index labels or name.\n",
      " |      \n",
      " |      Function / dict values must be unique (1-to-1). Labels not contained in\n",
      " |      a dict / Series will be left as-is. Extra labels listed don't throw an\n",
      " |      error.\n",
      " |      \n",
      " |      Alternatively, change ``Series.name`` with a scalar value.\n",
      " |      \n",
      " |      See the :ref:`user guide <basics.rename>` for more.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      index : scalar, hashable sequence, dict-like or function, optional\n",
      " |          dict-like or functions are transformations to apply to\n",
      " |          the index.\n",
      " |          Scalar or hashable sequence-like will alter the ``Series.name``\n",
      " |          attribute.\n",
      " |      copy : bool, default True\n",
      " |          Also copy underlying data\n",
      " |      inplace : bool, default False\n",
      " |          Whether to return a new Series. If True then value of copy is\n",
      " |          ignored.\n",
      " |      level : int or level name, default None\n",
      " |          In case of a MultiIndex, only rename labels in the specified\n",
      " |          level.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      renamed : Series (new object)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rename_axis\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      dtype: int64\n",
      " |      >>> s.rename(\"my_name\") # scalar, changes Series.name\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      Name: my_name, dtype: int64\n",
      " |      >>> s.rename(lambda x: x ** 2)  # function, changes labels\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      4    3\n",
      " |      dtype: int64\n",
      " |      >>> s.rename({1: 3, 2: 5})  # mapping, changes labels\n",
      " |      0    1\n",
      " |      3    2\n",
      " |      5    3\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  reorder_levels(self, order)\n",
      " |      Rearrange index levels using input order.\n",
      " |      \n",
      " |      May not drop or duplicate levels.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      order : list of int representing new level order\n",
      " |             (reference level by number or key)\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      type of caller (new object)\n",
      " |  \n",
      " |  repeat(self, repeats, axis=None)\n",
      " |      Repeat elements of a Series.\n",
      " |      \n",
      " |      Returns a new Series where each element of the current Series\n",
      " |      is repeated consecutively a given number of times.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      repeats : int or array of ints\n",
      " |          The number of repetitions for each element. This should be a\n",
      " |          non-negative integer. Repeating 0 times will return an empty\n",
      " |          Series.\n",
      " |      axis : None\n",
      " |          Must be ``None``. Has no effect but is accepted for compatibility\n",
      " |          with numpy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      repeated_series : Series\n",
      " |          Newly created Series with repeated elements.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Index.repeat : Equivalent function for Index.\n",
      " |      numpy.repeat : Similar method for :class:`numpy.ndarray`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(['a', 'b', 'c'])\n",
      " |      >>> s\n",
      " |      0    a\n",
      " |      1    b\n",
      " |      2    c\n",
      " |      dtype: object\n",
      " |      >>> s.repeat(2)\n",
      " |      0    a\n",
      " |      0    a\n",
      " |      1    b\n",
      " |      1    b\n",
      " |      2    c\n",
      " |      2    c\n",
      " |      dtype: object\n",
      " |      >>> s.repeat([1, 2, 3])\n",
      " |      0    a\n",
      " |      1    b\n",
      " |      1    b\n",
      " |      2    c\n",
      " |      2    c\n",
      " |      2    c\n",
      " |      dtype: object\n",
      " |  \n",
      " |  replace(self, to_replace=None, value=None, inplace=False, limit=None, regex=False, method='pad')\n",
      " |      Replace values given in `to_replace` with `value`.\n",
      " |      \n",
      " |      Values of the Series are replaced with other values dynamically.\n",
      " |      This differs from updating with ``.loc`` or ``.iloc``, which require\n",
      " |      you to specify a location to update with some value.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      to_replace : str, regex, list, dict, Series, int, float, or None\n",
      " |          How to find the values that will be replaced.\n",
      " |      \n",
      " |          * numeric, str or regex:\n",
      " |      \n",
      " |              - numeric: numeric values equal to `to_replace` will be\n",
      " |                replaced with `value`\n",
      " |              - str: string exactly matching `to_replace` will be replaced\n",
      " |                with `value`\n",
      " |              - regex: regexs matching `to_replace` will be replaced with\n",
      " |                `value`\n",
      " |      \n",
      " |          * list of str, regex, or numeric:\n",
      " |      \n",
      " |              - First, if `to_replace` and `value` are both lists, they\n",
      " |                **must** be the same length.\n",
      " |              - Second, if ``regex=True`` then all of the strings in **both**\n",
      " |                lists will be interpreted as regexs otherwise they will match\n",
      " |                directly. This doesn't matter much for `value` since there\n",
      " |                are only a few possible substitution regexes you can use.\n",
      " |              - str, regex and numeric rules apply as above.\n",
      " |      \n",
      " |          * dict:\n",
      " |      \n",
      " |              - Dicts can be used to specify different replacement values\n",
      " |                for different existing values. For example,\n",
      " |                ``{'a': 'b', 'y': 'z'}`` replaces the value 'a' with 'b' and\n",
      " |                'y' with 'z'. To use a dict in this way the `value`\n",
      " |                parameter should be `None`.\n",
      " |              - For a DataFrame a dict can specify that different values\n",
      " |                should be replaced in different columns. For example,\n",
      " |                ``{'a': 1, 'b': 'z'}`` looks for the value 1 in column 'a'\n",
      " |                and the value 'z' in column 'b' and replaces these values\n",
      " |                with whatever is specified in `value`. The `value` parameter\n",
      " |                should not be ``None`` in this case. You can treat this as a\n",
      " |                special case of passing two lists except that you are\n",
      " |                specifying the column to search in.\n",
      " |              - For a DataFrame nested dictionaries, e.g.,\n",
      " |                ``{'a': {'b': np.nan}}``, are read as follows: look in column\n",
      " |                'a' for the value 'b' and replace it with NaN. The `value`\n",
      " |                parameter should be ``None`` to use a nested dict in this\n",
      " |                way. You can nest regular expressions as well. Note that\n",
      " |                column names (the top-level dictionary keys in a nested\n",
      " |                dictionary) **cannot** be regular expressions.\n",
      " |      \n",
      " |          * None:\n",
      " |      \n",
      " |              - This means that the `regex` argument must be a string,\n",
      " |                compiled regular expression, or list, dict, ndarray or\n",
      " |                Series of such elements. If `value` is also ``None`` then\n",
      " |                this **must** be a nested dictionary or Series.\n",
      " |      \n",
      " |          See the examples section for examples of each of these.\n",
      " |      value : scalar, dict, list, str, regex, default None\n",
      " |          Value to replace any values matching `to_replace` with.\n",
      " |          For a DataFrame a dict of values can be used to specify which\n",
      " |          value to use for each column (columns not in the dict will not be\n",
      " |          filled). Regular expressions, strings and lists or dicts of such\n",
      " |          objects are also allowed.\n",
      " |      inplace : bool, default False\n",
      " |          If True, in place. Note: this will modify any\n",
      " |          other views on this object (e.g. a column from a DataFrame).\n",
      " |          Returns the caller if this is True.\n",
      " |      limit : int, default None\n",
      " |          Maximum size gap to forward or backward fill.\n",
      " |      regex : bool or same types as `to_replace`, default False\n",
      " |          Whether to interpret `to_replace` and/or `value` as regular\n",
      " |          expressions. If this is ``True`` then `to_replace` *must* be a\n",
      " |          string. Alternatively, this could be a regular expression or a\n",
      " |          list, dict, or array of regular expressions in which case\n",
      " |          `to_replace` must be ``None``.\n",
      " |      method : {'pad', 'ffill', 'bfill', `None`}\n",
      " |          The method to use when for replacement, when `to_replace` is a\n",
      " |          scalar, list or tuple and `value` is ``None``.\n",
      " |      \n",
      " |          .. versionchanged:: 0.23.0\n",
      " |              Added to DataFrame.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Object after replacement.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      AssertionError\n",
      " |          * If `regex` is not a ``bool`` and `to_replace` is not\n",
      " |            ``None``.\n",
      " |      TypeError\n",
      " |          * If `to_replace` is a ``dict`` and `value` is not a ``list``,\n",
      " |            ``dict``, ``ndarray``, or ``Series``\n",
      " |          * If `to_replace` is ``None`` and `regex` is not compilable\n",
      " |            into a regular expression or is a list, dict, ndarray, or\n",
      " |            Series.\n",
      " |          * When replacing multiple ``bool`` or ``datetime64`` objects and\n",
      " |            the arguments to `to_replace` does not match the type of the\n",
      " |            value being replaced\n",
      " |      ValueError\n",
      " |          * If a ``list`` or an ``ndarray`` is passed to `to_replace` and\n",
      " |            `value` but they are not the same length.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.fillna : Fill NA values.\n",
      " |      Series.where : Replace values based on boolean condition.\n",
      " |      Series.str.replace : Simple string replacement.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      * Regex substitution is performed under the hood with ``re.sub``. The\n",
      " |        rules for substitution for ``re.sub`` are the same.\n",
      " |      * Regular expressions will only substitute on strings, meaning you\n",
      " |        cannot provide, for example, a regular expression matching floating\n",
      " |        point numbers and expect the columns in your frame that have a\n",
      " |        numeric dtype to be matched. However, if those floating point\n",
      " |        numbers *are* strings, then you can do this.\n",
      " |      * This method has *a lot* of options. You are encouraged to experiment\n",
      " |        and play with this method to gain intuition about how it works.\n",
      " |      * When dict is used as the `to_replace` value, it is like\n",
      " |        key(s) in the dict are the to_replace part and\n",
      " |        value(s) in the dict are the value parameter.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      **Scalar `to_replace` and `value`**\n",
      " |      \n",
      " |      >>> s = pd.Series([0, 1, 2, 3, 4])\n",
      " |      >>> s.replace(0, 5)\n",
      " |      0    5\n",
      " |      1    1\n",
      " |      2    2\n",
      " |      3    3\n",
      " |      4    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'A': [0, 1, 2, 3, 4],\n",
      " |      ...                    'B': [5, 6, 7, 8, 9],\n",
      " |      ...                    'C': ['a', 'b', 'c', 'd', 'e']})\n",
      " |      >>> df.replace(0, 5)\n",
      " |         A  B  C\n",
      " |      0  5  5  a\n",
      " |      1  1  6  b\n",
      " |      2  2  7  c\n",
      " |      3  3  8  d\n",
      " |      4  4  9  e\n",
      " |      \n",
      " |      **List-like `to_replace`**\n",
      " |      \n",
      " |      >>> df.replace([0, 1, 2, 3], 4)\n",
      " |         A  B  C\n",
      " |      0  4  5  a\n",
      " |      1  4  6  b\n",
      " |      2  4  7  c\n",
      " |      3  4  8  d\n",
      " |      4  4  9  e\n",
      " |      \n",
      " |      >>> df.replace([0, 1, 2, 3], [4, 3, 2, 1])\n",
      " |         A  B  C\n",
      " |      0  4  5  a\n",
      " |      1  3  6  b\n",
      " |      2  2  7  c\n",
      " |      3  1  8  d\n",
      " |      4  4  9  e\n",
      " |      \n",
      " |      >>> s.replace([1, 2], method='bfill')\n",
      " |      0    0\n",
      " |      1    3\n",
      " |      2    3\n",
      " |      3    3\n",
      " |      4    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      **dict-like `to_replace`**\n",
      " |      \n",
      " |      >>> df.replace({0: 10, 1: 100})\n",
      " |           A  B  C\n",
      " |      0   10  5  a\n",
      " |      1  100  6  b\n",
      " |      2    2  7  c\n",
      " |      3    3  8  d\n",
      " |      4    4  9  e\n",
      " |      \n",
      " |      >>> df.replace({'A': 0, 'B': 5}, 100)\n",
      " |           A    B  C\n",
      " |      0  100  100  a\n",
      " |      1    1    6  b\n",
      " |      2    2    7  c\n",
      " |      3    3    8  d\n",
      " |      4    4    9  e\n",
      " |      \n",
      " |      >>> df.replace({'A': {0: 100, 4: 400}})\n",
      " |           A  B  C\n",
      " |      0  100  5  a\n",
      " |      1    1  6  b\n",
      " |      2    2  7  c\n",
      " |      3    3  8  d\n",
      " |      4  400  9  e\n",
      " |      \n",
      " |      **Regular expression `to_replace`**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'A': ['bat', 'foo', 'bait'],\n",
      " |      ...                    'B': ['abc', 'bar', 'xyz']})\n",
      " |      >>> df.replace(to_replace=r'^ba.$', value='new', regex=True)\n",
      " |            A    B\n",
      " |      0   new  abc\n",
      " |      1   foo  new\n",
      " |      2  bait  xyz\n",
      " |      \n",
      " |      >>> df.replace({'A': r'^ba.$'}, {'A': 'new'}, regex=True)\n",
      " |            A    B\n",
      " |      0   new  abc\n",
      " |      1   foo  bar\n",
      " |      2  bait  xyz\n",
      " |      \n",
      " |      >>> df.replace(regex=r'^ba.$', value='new')\n",
      " |            A    B\n",
      " |      0   new  abc\n",
      " |      1   foo  new\n",
      " |      2  bait  xyz\n",
      " |      \n",
      " |      >>> df.replace(regex={r'^ba.$': 'new', 'foo': 'xyz'})\n",
      " |            A    B\n",
      " |      0   new  abc\n",
      " |      1   xyz  new\n",
      " |      2  bait  xyz\n",
      " |      \n",
      " |      >>> df.replace(regex=[r'^ba.$', 'foo'], value='new')\n",
      " |            A    B\n",
      " |      0   new  abc\n",
      " |      1   new  new\n",
      " |      2  bait  xyz\n",
      " |      \n",
      " |      Note that when replacing multiple ``bool`` or ``datetime64`` objects,\n",
      " |      the data types in the `to_replace` parameter must match the data\n",
      " |      type of the value being replaced:\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'A': [True, False, True],\n",
      " |      ...                    'B': [False, True, False]})\n",
      " |      >>> df.replace({'a string': 'new value', True: False})  # raises\n",
      " |      Traceback (most recent call last):\n",
      " |          ...\n",
      " |      TypeError: Cannot compare types 'ndarray(dtype=bool)' and 'str'\n",
      " |      \n",
      " |      This raises a ``TypeError`` because one of the ``dict`` keys is not of\n",
      " |      the correct type for replacement.\n",
      " |      \n",
      " |      Compare the behavior of ``s.replace({'a': None})`` and\n",
      " |      ``s.replace('a', None)`` to understand the peculiarities\n",
      " |      of the `to_replace` parameter:\n",
      " |      \n",
      " |      >>> s = pd.Series([10, 'a', 'a', 'b', 'a'])\n",
      " |      \n",
      " |      When one uses a dict as the `to_replace` value, it is like the\n",
      " |      value(s) in the dict are equal to the `value` parameter.\n",
      " |      ``s.replace({'a': None})`` is equivalent to\n",
      " |      ``s.replace(to_replace={'a': None}, value=None, method=None)``:\n",
      " |      \n",
      " |      >>> s.replace({'a': None})\n",
      " |      0      10\n",
      " |      1    None\n",
      " |      2    None\n",
      " |      3       b\n",
      " |      4    None\n",
      " |      dtype: object\n",
      " |      \n",
      " |      When ``value=None`` and `to_replace` is a scalar, list or\n",
      " |      tuple, `replace` uses the method parameter (default 'pad') to do the\n",
      " |      replacement. So this is why the 'a' values are being replaced by 10\n",
      " |      in rows 1 and 2 and 'b' in row 4 in this case.\n",
      " |      The command ``s.replace('a', None)`` is actually equivalent to\n",
      " |      ``s.replace(to_replace='a', value=None, method='pad')``:\n",
      " |      \n",
      " |      >>> s.replace('a', None)\n",
      " |      0    10\n",
      " |      1    10\n",
      " |      2    10\n",
      " |      3     b\n",
      " |      4     b\n",
      " |      dtype: object\n",
      " |  \n",
      " |  reset_index(self, level=None, drop=False, name=None, inplace=False)\n",
      " |      Generate a new DataFrame or Series with the index reset.\n",
      " |      \n",
      " |      This is useful when the index needs to be treated as a column, or\n",
      " |      when the index is meaningless and needs to be reset to the default\n",
      " |      before another operation.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      level : int, str, tuple, or list, default optional\n",
      " |          For a Series with a MultiIndex, only remove the specified levels\n",
      " |          from the index. Removes all levels by default.\n",
      " |      drop : bool, default False\n",
      " |          Just reset the index, without inserting it as a column in\n",
      " |          the new DataFrame.\n",
      " |      name : object, optional\n",
      " |          The name to use for the column containing the original Series\n",
      " |          values. Uses ``self.name`` by default. This argument is ignored\n",
      " |          when `drop` is True.\n",
      " |      inplace : bool, default False\n",
      " |          Modify the Series in place (do not create a new object).\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          When `drop` is False (the default), a DataFrame is returned.\n",
      " |          The newly created columns will come first in the DataFrame,\n",
      " |          followed by the original Series values.\n",
      " |          When `drop` is True, a `Series` is returned.\n",
      " |          In either case, if ``inplace=True``, no value is returned.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.reset_index: Analogous function for DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4], name='foo',\n",
      " |      ...               index=pd.Index(['a', 'b', 'c', 'd'], name='idx'))\n",
      " |      \n",
      " |      Generate a DataFrame with default index.\n",
      " |      \n",
      " |      >>> s.reset_index()\n",
      " |        idx  foo\n",
      " |      0   a    1\n",
      " |      1   b    2\n",
      " |      2   c    3\n",
      " |      3   d    4\n",
      " |      \n",
      " |      To specify the name of the new column use `name`.\n",
      " |      \n",
      " |      >>> s.reset_index(name='values')\n",
      " |        idx  values\n",
      " |      0   a       1\n",
      " |      1   b       2\n",
      " |      2   c       3\n",
      " |      3   d       4\n",
      " |      \n",
      " |      To generate a new Series with the default set `drop` to True.\n",
      " |      \n",
      " |      >>> s.reset_index(drop=True)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      Name: foo, dtype: int64\n",
      " |      \n",
      " |      To update the Series in place, without generating a new one\n",
      " |      set `inplace` to True. Note that it also requires ``drop=True``.\n",
      " |      \n",
      " |      >>> s.reset_index(inplace=True, drop=True)\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      Name: foo, dtype: int64\n",
      " |      \n",
      " |      The `level` parameter is interesting for Series with a multi-level\n",
      " |      index.\n",
      " |      \n",
      " |      >>> arrays = [np.array(['bar', 'bar', 'baz', 'baz']),\n",
      " |      ...           np.array(['one', 'two', 'one', 'two'])]\n",
      " |      >>> s2 = pd.Series(\n",
      " |      ...     range(4), name='foo',\n",
      " |      ...     index=pd.MultiIndex.from_arrays(arrays,\n",
      " |      ...                                     names=['a', 'b']))\n",
      " |      \n",
      " |      To remove a specific level from the Index, use `level`.\n",
      " |      \n",
      " |      >>> s2.reset_index(level='a')\n",
      " |             a  foo\n",
      " |      b\n",
      " |      one  bar    0\n",
      " |      two  bar    1\n",
      " |      one  baz    2\n",
      " |      two  baz    3\n",
      " |      \n",
      " |      If `level` is not set, all levels are removed from the Index.\n",
      " |      \n",
      " |      >>> s2.reset_index()\n",
      " |           a    b  foo\n",
      " |      0  bar  one    0\n",
      " |      1  bar  two    1\n",
      " |      2  baz  one    2\n",
      " |      3  baz  two    3\n",
      " |  \n",
      " |  rfloordiv(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Integer division of series and other, element-wise (binary operator `rfloordiv`).\n",
      " |      \n",
      " |      Equivalent to ``other // series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.floordiv\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  rmod(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Modulo of series and other, element-wise (binary operator `rmod`).\n",
      " |      \n",
      " |      Equivalent to ``other % series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.mod\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  rmul(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Multiplication of series and other, element-wise (binary operator `rmul`).\n",
      " |      \n",
      " |      Equivalent to ``other * series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.mul\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  rolling(self, window, min_periods=None, center=False, win_type=None, on=None, axis=0, closed=None)\n",
      " |      Provides rolling window calculations.\n",
      " |      \n",
      " |      .. versionadded:: 0.18.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      window : int, or offset\n",
      " |          Size of the moving window. This is the number of observations used for\n",
      " |          calculating the statistic. Each window will be a fixed size.\n",
      " |      \n",
      " |          If its an offset then this will be the time period of each window. Each\n",
      " |          window will be a variable sized based on the observations included in\n",
      " |          the time-period. This is only valid for datetimelike indexes. This is\n",
      " |          new in 0.19.0\n",
      " |      min_periods : int, default None\n",
      " |          Minimum number of observations in window required to have a value\n",
      " |          (otherwise result is NA). For a window that is specified by an offset,\n",
      " |          `min_periods` will default to 1. Otherwise, `min_periods` will default\n",
      " |          to the size of the window.\n",
      " |      center : bool, default False\n",
      " |          Set the labels at the center of the window.\n",
      " |      win_type : str, default None\n",
      " |          Provide a window type. If ``None``, all points are evenly weighted.\n",
      " |          See the notes below for further information.\n",
      " |      on : str, optional\n",
      " |          For a DataFrame, column on which to calculate\n",
      " |          the rolling window, rather than the index\n",
      " |      axis : int or str, default 0\n",
      " |      closed : str, default None\n",
      " |          Make the interval closed on the 'right', 'left', 'both' or\n",
      " |          'neither' endpoints.\n",
      " |          For offset-based windows, it defaults to 'right'.\n",
      " |          For fixed windows, defaults to 'both'. Remaining cases not implemented\n",
      " |          for fixed windows.\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      a Window or Rolling sub-classed for the particular operation\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      expanding : Provides expanding transformations.\n",
      " |      ewm : Provides exponential weighted functions.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      By default, the result is set to the right edge of the window. This can be\n",
      " |      changed to the center of the window by setting ``center=True``.\n",
      " |      \n",
      " |      To learn more about the offsets & frequency strings, please see `this link\n",
      " |      <http://pandas.pydata.org/pandas-docs/stable/timeseries.html#offset-aliases>`__.\n",
      " |      \n",
      " |      The recognized win_types are:\n",
      " |      \n",
      " |      * ``boxcar``\n",
      " |      * ``triang``\n",
      " |      * ``blackman``\n",
      " |      * ``hamming``\n",
      " |      * ``bartlett``\n",
      " |      * ``parzen``\n",
      " |      * ``bohman``\n",
      " |      * ``blackmanharris``\n",
      " |      * ``nuttall``\n",
      " |      * ``barthann``\n",
      " |      * ``kaiser`` (needs beta)\n",
      " |      * ``gaussian`` (needs std)\n",
      " |      * ``general_gaussian`` (needs power, width)\n",
      " |      * ``slepian`` (needs width).\n",
      " |      \n",
      " |      If ``win_type=None`` all points are evenly weighted. To learn more about\n",
      " |      different window types see `scipy.signal window functions\n",
      " |      <https://docs.scipy.org/doc/scipy/reference/signal.html#window-functions>`__.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'B': [0, 1, 2, np.nan, 4]})\n",
      " |      >>> df\n",
      " |           B\n",
      " |      0  0.0\n",
      " |      1  1.0\n",
      " |      2  2.0\n",
      " |      3  NaN\n",
      " |      4  4.0\n",
      " |      \n",
      " |      Rolling sum with a window length of 2, using the 'triang'\n",
      " |      window type.\n",
      " |      \n",
      " |      >>> df.rolling(2, win_type='triang').sum()\n",
      " |           B\n",
      " |      0  NaN\n",
      " |      1  1.0\n",
      " |      2  2.5\n",
      " |      3  NaN\n",
      " |      4  NaN\n",
      " |      \n",
      " |      Rolling sum with a window length of 2, min_periods defaults\n",
      " |      to the window length.\n",
      " |      \n",
      " |      >>> df.rolling(2).sum()\n",
      " |           B\n",
      " |      0  NaN\n",
      " |      1  1.0\n",
      " |      2  3.0\n",
      " |      3  NaN\n",
      " |      4  NaN\n",
      " |      \n",
      " |      Same as above, but explicitly set the min_periods\n",
      " |      \n",
      " |      >>> df.rolling(2, min_periods=1).sum()\n",
      " |           B\n",
      " |      0  0.0\n",
      " |      1  1.0\n",
      " |      2  3.0\n",
      " |      3  2.0\n",
      " |      4  4.0\n",
      " |      \n",
      " |      A ragged (meaning not-a-regular frequency), time-indexed DataFrame\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'B': [0, 1, 2, np.nan, 4]},\n",
      " |      ...                   index = [pd.Timestamp('20130101 09:00:00'),\n",
      " |      ...                            pd.Timestamp('20130101 09:00:02'),\n",
      " |      ...                            pd.Timestamp('20130101 09:00:03'),\n",
      " |      ...                            pd.Timestamp('20130101 09:00:05'),\n",
      " |      ...                            pd.Timestamp('20130101 09:00:06')])\n",
      " |      \n",
      " |      >>> df\n",
      " |                             B\n",
      " |      2013-01-01 09:00:00  0.0\n",
      " |      2013-01-01 09:00:02  1.0\n",
      " |      2013-01-01 09:00:03  2.0\n",
      " |      2013-01-01 09:00:05  NaN\n",
      " |      2013-01-01 09:00:06  4.0\n",
      " |      \n",
      " |      Contrasting to an integer rolling window, this will roll a variable\n",
      " |      length window corresponding to the time period.\n",
      " |      The default for min_periods is 1.\n",
      " |      \n",
      " |      >>> df.rolling('2s').sum()\n",
      " |                             B\n",
      " |      2013-01-01 09:00:00  0.0\n",
      " |      2013-01-01 09:00:02  1.0\n",
      " |      2013-01-01 09:00:03  3.0\n",
      " |      2013-01-01 09:00:05  NaN\n",
      " |      2013-01-01 09:00:06  4.0\n",
      " |  \n",
      " |  round(self, decimals=0, *args, **kwargs)\n",
      " |      Round each value in a Series to the given number of decimals.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      decimals : int\n",
      " |          Number of decimal places to round to (default: 0).\n",
      " |          If decimals is negative, it specifies the number of\n",
      " |          positions to the left of the decimal point.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series object\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.around\n",
      " |      DataFrame.round\n",
      " |  \n",
      " |  rpow(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Exponential power of series and other, element-wise (binary operator `rpow`).\n",
      " |      \n",
      " |      Equivalent to ``other ** series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.pow\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  rsub(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Subtraction of series and other, element-wise (binary operator `rsub`).\n",
      " |      \n",
      " |      Equivalent to ``other - series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.sub\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  rtruediv(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Floating division of series and other, element-wise (binary operator `rtruediv`).\n",
      " |      \n",
      " |      Equivalent to ``other / series``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.truediv\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  searchsorted(self, value, side='left', sorter=None)\n",
      " |      Find indices where elements should be inserted to maintain order.\n",
      " |      \n",
      " |      Find the indices into a sorted Series `self` such that, if the\n",
      " |      corresponding elements in `value` were inserted before the indices,\n",
      " |      the order of `self` would be preserved.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      value : array_like\n",
      " |          Values to insert into `self`.\n",
      " |      side : {'left', 'right'}, optional\n",
      " |          If 'left', the index of the first suitable location found is given.\n",
      " |          If 'right', return the last such index.  If there is no suitable\n",
      " |          index, return either 0 or N (where N is the length of `self`).\n",
      " |      sorter : 1-D array_like, optional\n",
      " |          Optional array of integer indices that sort `self` into ascending\n",
      " |          order. They are typically the result of ``np.argsort``.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      int or array of int\n",
      " |          A scalar or array of insertion points with the\n",
      " |          same shape as `value`.\n",
      " |      \n",
      " |          .. versionchanged :: 0.24.0\n",
      " |              If `value` is a scalar, an int is now always returned.\n",
      " |              Previously, scalar inputs returned an 1-item array for\n",
      " |              :class:`Series` and :class:`Categorical`.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.searchsorted\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Binary search is used to find the required insertion points.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> x = pd.Series([1, 2, 3])\n",
      " |      >>> x\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> x.searchsorted(4)\n",
      " |      3\n",
      " |      \n",
      " |      >>> x.searchsorted([0, 4])\n",
      " |      array([0, 3])\n",
      " |      \n",
      " |      >>> x.searchsorted([1, 3], side='left')\n",
      " |      array([0, 2])\n",
      " |      \n",
      " |      >>> x.searchsorted([1, 3], side='right')\n",
      " |      array([1, 3])\n",
      " |      \n",
      " |      >>> x = pd.Categorical(['apple', 'bread', 'bread',\n",
      " |                              'cheese', 'milk'], ordered=True)\n",
      " |      [apple, bread, bread, cheese, milk]\n",
      " |      Categories (4, object): [apple < bread < cheese < milk]\n",
      " |      \n",
      " |      >>> x.searchsorted('bread')\n",
      " |      1\n",
      " |      \n",
      " |      >>> x.searchsorted(['bread'], side='right')\n",
      " |      array([3])\n",
      " |  \n",
      " |  sem(self, axis=None, skipna=None, level=None, ddof=1, numeric_only=None, **kwargs)\n",
      " |      Return unbiased standard error of the mean over requested axis.\n",
      " |      \n",
      " |      Normalized by N-1 by default. This can be changed using the ddof argument\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar\n",
      " |      ddof : int, default 1\n",
      " |          Delta Degrees of Freedom. The divisor used in calculations is N - ddof,\n",
      " |          where N represents the number of elements.\n",
      " |      numeric_only : boolean, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      sem : scalar or Series (if level specified)\n",
      " |  \n",
      " |  set_value(self, label, value, takeable=False)\n",
      " |      Quickly set single value at passed label.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          Please use .at[] or .iat[] accessors.\n",
      " |      \n",
      " |      If label is not contained, a new object is created with the label\n",
      " |      placed at the end of the result index.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      label : object\n",
      " |          Partial indexing with MultiIndex not allowed\n",
      " |      value : object\n",
      " |          Scalar value\n",
      " |      takeable : interpret the index as indexers, default False\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      series : Series\n",
      " |          If label is contained, will be reference to calling Series,\n",
      " |          otherwise a new object\n",
      " |  \n",
      " |  shift(self, periods=1, freq=None, axis=0, fill_value=None)\n",
      " |      Shift index by desired number of periods with an optional time `freq`.\n",
      " |      \n",
      " |      When `freq` is not passed, shift the index without realigning the data.\n",
      " |      If `freq` is passed (in this case, the index must be date or datetime,\n",
      " |      or it will raise a `NotImplementedError`), the index will be\n",
      " |      increased using the periods and the `freq`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      periods : int\n",
      " |          Number of periods to shift. Can be positive or negative.\n",
      " |      freq : DateOffset, tseries.offsets, timedelta, or str, optional\n",
      " |          Offset to use from the tseries module or time rule (e.g. 'EOM').\n",
      " |          If `freq` is specified then the index values are shifted but the\n",
      " |          data is not realigned. That is, use `freq` if you would like to\n",
      " |          extend the index when shifting and preserve the original data.\n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default None\n",
      " |          Shift direction.\n",
      " |      fill_value : object, optional\n",
      " |          The scalar value to use for newly introduced missing values.\n",
      " |          the default depends on the dtype of `self`.\n",
      " |          For numeric data, ``np.nan`` is used.\n",
      " |          For datetime, timedelta, or period data, etc. :attr:`NaT` is used.\n",
      " |          For extension dtypes, ``self.dtype.na_value`` is used.\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Copy of input object, shifted.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Index.shift : Shift values of Index.\n",
      " |      DatetimeIndex.shift : Shift values of DatetimeIndex.\n",
      " |      PeriodIndex.shift : Shift values of PeriodIndex.\n",
      " |      tshift : Shift the time index, using the index's frequency if\n",
      " |          available.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'Col1': [10, 20, 15, 30, 45],\n",
      " |      ...                    'Col2': [13, 23, 18, 33, 48],\n",
      " |      ...                    'Col3': [17, 27, 22, 37, 52]})\n",
      " |      \n",
      " |      >>> df.shift(periods=3)\n",
      " |         Col1  Col2  Col3\n",
      " |      0   NaN   NaN   NaN\n",
      " |      1   NaN   NaN   NaN\n",
      " |      2   NaN   NaN   NaN\n",
      " |      3  10.0  13.0  17.0\n",
      " |      4  20.0  23.0  27.0\n",
      " |      \n",
      " |      >>> df.shift(periods=1, axis='columns')\n",
      " |         Col1  Col2  Col3\n",
      " |      0   NaN  10.0  13.0\n",
      " |      1   NaN  20.0  23.0\n",
      " |      2   NaN  15.0  18.0\n",
      " |      3   NaN  30.0  33.0\n",
      " |      4   NaN  45.0  48.0\n",
      " |      \n",
      " |      >>> df.shift(periods=3, fill_value=0)\n",
      " |         Col1  Col2  Col3\n",
      " |      0     0     0     0\n",
      " |      1     0     0     0\n",
      " |      2     0     0     0\n",
      " |      3    10    13    17\n",
      " |      4    20    23    27\n",
      " |  \n",
      " |  skew(self, axis=None, skipna=None, level=None, numeric_only=None, **kwargs)\n",
      " |      Return unbiased skew over requested axis\n",
      " |      Normalized by N-1.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      skew : scalar or Series (if level specified)\n",
      " |  \n",
      " |  sort_index(self, axis=0, level=None, ascending=True, inplace=False, kind='quicksort', na_position='last', sort_remaining=True)\n",
      " |      Sort Series by index labels.\n",
      " |      \n",
      " |      Returns a new Series sorted by label if `inplace` argument is\n",
      " |      ``False``, otherwise updates the original series and returns None.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : int, default 0\n",
      " |          Axis to direct sorting. This can only be 0 for Series.\n",
      " |      level : int, optional\n",
      " |          If not None, sort on values in specified index level(s).\n",
      " |      ascending : bool, default true\n",
      " |          Sort ascending vs. descending.\n",
      " |      inplace : bool, default False\n",
      " |          If True, perform operation in-place.\n",
      " |      kind : {'quicksort', 'mergesort', 'heapsort'}, default 'quicksort'\n",
      " |          Choice of sorting algorithm. See also :func:`numpy.sort` for more\n",
      " |          information.  'mergesort' is the only stable algorithm. For\n",
      " |          DataFrames, this option is only applied when sorting on a single\n",
      " |          column or label.\n",
      " |      na_position : {'first', 'last'}, default 'last'\n",
      " |          If 'first' puts NaNs at the beginning, 'last' puts NaNs at the end.\n",
      " |          Not implemented for MultiIndex.\n",
      " |      sort_remaining : bool, default True\n",
      " |          If true and sorting by level and index is multilevel, sort by other\n",
      " |          levels too (in order) after sorting by specified level.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      pandas.Series\n",
      " |          The original Series sorted by the labels\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.sort_index: Sort DataFrame by the index.\n",
      " |      DataFrame.sort_values: Sort DataFrame by the value.\n",
      " |      Series.sort_values : Sort Series by the value.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(['a', 'b', 'c', 'd'], index=[3, 2, 1, 4])\n",
      " |      >>> s.sort_index()\n",
      " |      1    c\n",
      " |      2    b\n",
      " |      3    a\n",
      " |      4    d\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Sort Descending\n",
      " |      \n",
      " |      >>> s.sort_index(ascending=False)\n",
      " |      4    d\n",
      " |      3    a\n",
      " |      2    b\n",
      " |      1    c\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Sort Inplace\n",
      " |      \n",
      " |      >>> s.sort_index(inplace=True)\n",
      " |      >>> s\n",
      " |      1    c\n",
      " |      2    b\n",
      " |      3    a\n",
      " |      4    d\n",
      " |      dtype: object\n",
      " |      \n",
      " |      By default NaNs are put at the end, but use `na_position` to place\n",
      " |      them at the beginning\n",
      " |      \n",
      " |      >>> s = pd.Series(['a', 'b', 'c', 'd'], index=[3, 2, 1, np.nan])\n",
      " |      >>> s.sort_index(na_position='first')\n",
      " |      NaN     d\n",
      " |       1.0    c\n",
      " |       2.0    b\n",
      " |       3.0    a\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Specify index level to sort\n",
      " |      \n",
      " |      >>> arrays = [np.array(['qux', 'qux', 'foo', 'foo',\n",
      " |      ...                     'baz', 'baz', 'bar', 'bar']),\n",
      " |      ...           np.array(['two', 'one', 'two', 'one',\n",
      " |      ...                     'two', 'one', 'two', 'one'])]\n",
      " |      >>> s = pd.Series([1, 2, 3, 4, 5, 6, 7, 8], index=arrays)\n",
      " |      >>> s.sort_index(level=1)\n",
      " |      bar  one    8\n",
      " |      baz  one    6\n",
      " |      foo  one    4\n",
      " |      qux  one    2\n",
      " |      bar  two    7\n",
      " |      baz  two    5\n",
      " |      foo  two    3\n",
      " |      qux  two    1\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Does not sort by remaining levels when sorting by levels\n",
      " |      \n",
      " |      >>> s.sort_index(level=1, sort_remaining=False)\n",
      " |      qux  one    2\n",
      " |      foo  one    4\n",
      " |      baz  one    6\n",
      " |      bar  one    8\n",
      " |      qux  two    1\n",
      " |      foo  two    3\n",
      " |      baz  two    5\n",
      " |      bar  two    7\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  sort_values(self, axis=0, ascending=True, inplace=False, kind='quicksort', na_position='last')\n",
      " |      Sort by the values.\n",
      " |      \n",
      " |      Sort a Series in ascending or descending order by some\n",
      " |      criterion.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index'}, default 0\n",
      " |          Axis to direct sorting. The value 'index' is accepted for\n",
      " |          compatibility with DataFrame.sort_values.\n",
      " |      ascending : bool, default True\n",
      " |          If True, sort values in ascending order, otherwise descending.\n",
      " |      inplace : bool, default False\n",
      " |          If True, perform operation in-place.\n",
      " |      kind : {'quicksort', 'mergesort' or 'heapsort'}, default 'quicksort'\n",
      " |          Choice of sorting algorithm. See also :func:`numpy.sort` for more\n",
      " |          information. 'mergesort' is the only stable  algorithm.\n",
      " |      na_position : {'first' or 'last'}, default 'last'\n",
      " |          Argument 'first' puts NaNs at the beginning, 'last' puts NaNs at\n",
      " |          the end.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          Series ordered by values.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.sort_index : Sort by the Series indices.\n",
      " |      DataFrame.sort_values : Sort DataFrame by the values along either axis.\n",
      " |      DataFrame.sort_index : Sort DataFrame by indices.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([np.nan, 1, 3, 10, 5])\n",
      " |      >>> s\n",
      " |      0     NaN\n",
      " |      1     1.0\n",
      " |      2     3.0\n",
      " |      3     10.0\n",
      " |      4     5.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Sort values ascending order (default behaviour)\n",
      " |      \n",
      " |      >>> s.sort_values(ascending=True)\n",
      " |      1     1.0\n",
      " |      2     3.0\n",
      " |      4     5.0\n",
      " |      3    10.0\n",
      " |      0     NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Sort values descending order\n",
      " |      \n",
      " |      >>> s.sort_values(ascending=False)\n",
      " |      3    10.0\n",
      " |      4     5.0\n",
      " |      2     3.0\n",
      " |      1     1.0\n",
      " |      0     NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Sort values inplace\n",
      " |      \n",
      " |      >>> s.sort_values(ascending=False, inplace=True)\n",
      " |      >>> s\n",
      " |      3    10.0\n",
      " |      4     5.0\n",
      " |      2     3.0\n",
      " |      1     1.0\n",
      " |      0     NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Sort values putting NAs first\n",
      " |      \n",
      " |      >>> s.sort_values(na_position='first')\n",
      " |      0     NaN\n",
      " |      1     1.0\n",
      " |      2     3.0\n",
      " |      4     5.0\n",
      " |      3    10.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Sort a series of strings\n",
      " |      \n",
      " |      >>> s = pd.Series(['z', 'b', 'd', 'a', 'c'])\n",
      " |      >>> s\n",
      " |      0    z\n",
      " |      1    b\n",
      " |      2    d\n",
      " |      3    a\n",
      " |      4    c\n",
      " |      dtype: object\n",
      " |      \n",
      " |      >>> s.sort_values()\n",
      " |      3    a\n",
      " |      1    b\n",
      " |      4    c\n",
      " |      2    d\n",
      " |      0    z\n",
      " |      dtype: object\n",
      " |  \n",
      " |  std(self, axis=None, skipna=None, level=None, ddof=1, numeric_only=None, **kwargs)\n",
      " |      Return sample standard deviation over requested axis.\n",
      " |      \n",
      " |      Normalized by N-1 by default. This can be changed using the ddof argument\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar\n",
      " |      ddof : int, default 1\n",
      " |          Delta Degrees of Freedom. The divisor used in calculations is N - ddof,\n",
      " |          where N represents the number of elements.\n",
      " |      numeric_only : boolean, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      std : scalar or Series (if level specified)\n",
      " |  \n",
      " |  sub(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Subtraction of series and other, element-wise (binary operator `sub`).\n",
      " |      \n",
      " |      Equivalent to ``series - other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rsub\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  subtract = sub(self, other, level=None, fill_value=None, axis=0)\n",
      " |  \n",
      " |  sum(self, axis=None, skipna=None, level=None, numeric_only=None, min_count=0, **kwargs)\n",
      " |      Return the sum of the values for the requested axis.\n",
      " |      \n",
      " |                  This is equivalent to the method ``numpy.sum``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |          Axis for the function to be applied on.\n",
      " |      skipna : bool, default True\n",
      " |          Exclude NA/null values when computing the result.\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar.\n",
      " |      numeric_only : bool, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      min_count : int, default 0\n",
      " |          The required number of valid values to perform the operation. If fewer than\n",
      " |          ``min_count`` non-NA values are present the result will be NA.\n",
      " |      \n",
      " |          .. versionadded :: 0.22.0\n",
      " |      \n",
      " |             Added with the default being 0. This means the sum of an all-NA\n",
      " |             or empty Series is 0, and the product of an all-NA or empty\n",
      " |             Series is 1.\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments to be passed to the function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      sum : scalar or Series (if level specified)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.sum : Return the sum.\n",
      " |      Series.min : Return the minimum.\n",
      " |      Series.max : Return the maximum.\n",
      " |      Series.idxmin : Return the index of the minimum.\n",
      " |      Series.idxmax : Return the index of the maximum.\n",
      " |      DataFrame.min : Return the sum over the requested axis.\n",
      " |      DataFrame.min : Return the minimum over the requested axis.\n",
      " |      DataFrame.max : Return the maximum over the requested axis.\n",
      " |      DataFrame.idxmin : Return the index of the minimum over the requested axis.\n",
      " |      DataFrame.idxmax : Return the index of the maximum over the requested axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> idx = pd.MultiIndex.from_arrays([\n",
      " |      ...     ['warm', 'warm', 'cold', 'cold'],\n",
      " |      ...     ['dog', 'falcon', 'fish', 'spider']],\n",
      " |      ...     names=['blooded', 'animal'])\n",
      " |      >>> s = pd.Series([4, 2, 0, 8], name='legs', index=idx)\n",
      " |      >>> s\n",
      " |      blooded  animal\n",
      " |      warm     dog       4\n",
      " |               falcon    2\n",
      " |      cold     fish      0\n",
      " |               spider    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.sum()\n",
      " |      14\n",
      " |      \n",
      " |      Sum using level names, as well as indices.\n",
      " |      \n",
      " |      >>> s.sum(level='blooded')\n",
      " |      blooded\n",
      " |      warm    6\n",
      " |      cold    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      >>> s.sum(level=0)\n",
      " |      blooded\n",
      " |      warm    6\n",
      " |      cold    8\n",
      " |      Name: legs, dtype: int64\n",
      " |      \n",
      " |      By default, the sum of an empty or all-NA Series is ``0``.\n",
      " |      \n",
      " |      >>> pd.Series([]).sum()  # min_count=0 is the default\n",
      " |      0.0\n",
      " |      \n",
      " |      This can be controlled with the ``min_count`` parameter. For example, if\n",
      " |      you'd like the sum of an empty series to be NaN, pass ``min_count=1``.\n",
      " |      \n",
      " |      >>> pd.Series([]).sum(min_count=1)\n",
      " |      nan\n",
      " |      \n",
      " |      Thanks to the ``skipna`` parameter, ``min_count`` handles all-NA and\n",
      " |      empty series identically.\n",
      " |      \n",
      " |      >>> pd.Series([np.nan]).sum()\n",
      " |      0.0\n",
      " |      \n",
      " |      >>> pd.Series([np.nan]).sum(min_count=1)\n",
      " |      nan\n",
      " |  \n",
      " |  swaplevel(self, i=-2, j=-1, copy=True)\n",
      " |      Swap levels i and j in a MultiIndex.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      i, j : int, string (can be mixed)\n",
      " |          Level of index to be swapped. Can pass level name as string.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      swapped : Series\n",
      " |      \n",
      " |      .. versionchanged:: 0.18.1\n",
      " |      \n",
      " |         The indexes ``i`` and ``j`` are now optional, and default to\n",
      " |         the two innermost levels of the index.\n",
      " |  \n",
      " |  to_csv(self, *args, **kwargs)\n",
      " |      Write object to a comma-separated values (csv) file.\n",
      " |      \n",
      " |      .. versionchanged:: 0.24.0\n",
      " |          The order of arguments for Series was changed.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path_or_buf : str or file handle, default None\n",
      " |          File path or object, if None is provided the result is returned as\n",
      " |          a string.  If a file object is passed it should be opened with\n",
      " |          `newline=''`, disabling universal newlines.\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      \n",
      " |             Was previously named \"path\" for Series.\n",
      " |      \n",
      " |      sep : str, default ','\n",
      " |          String of length 1. Field delimiter for the output file.\n",
      " |      na_rep : str, default ''\n",
      " |          Missing data representation.\n",
      " |      float_format : str, default None\n",
      " |          Format string for floating point numbers.\n",
      " |      columns : sequence, optional\n",
      " |          Columns to write.\n",
      " |      header : bool or list of str, default True\n",
      " |          Write out the column names. If a list of strings is given it is\n",
      " |          assumed to be aliases for the column names.\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      \n",
      " |             Previously defaulted to False for Series.\n",
      " |      \n",
      " |      index : bool, default True\n",
      " |          Write row names (index).\n",
      " |      index_label : str or sequence, or False, default None\n",
      " |          Column label for index column(s) if desired. If None is given, and\n",
      " |          `header` and `index` are True, then the index names are used. A\n",
      " |          sequence should be given if the object uses MultiIndex. If\n",
      " |          False do not print fields for index names. Use index_label=False\n",
      " |          for easier importing in R.\n",
      " |      mode : str\n",
      " |          Python write mode, default 'w'.\n",
      " |      encoding : str, optional\n",
      " |          A string representing the encoding to use in the output file,\n",
      " |          defaults to 'ascii' on Python 2 and 'utf-8' on Python 3.\n",
      " |      compression : str, default 'infer'\n",
      " |          Compression mode among the following possible values: {'infer',\n",
      " |          'gzip', 'bz2', 'zip', 'xz', None}. If 'infer' and `path_or_buf`\n",
      " |          is path-like, then detect compression from the following\n",
      " |          extensions: '.gz', '.bz2', '.zip' or '.xz'. (otherwise no\n",
      " |          compression).\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      \n",
      " |             'infer' option added and set to default.\n",
      " |      \n",
      " |      quoting : optional constant from csv module\n",
      " |          Defaults to csv.QUOTE_MINIMAL. If you have set a `float_format`\n",
      " |          then floats are converted to strings and thus csv.QUOTE_NONNUMERIC\n",
      " |          will treat them as non-numeric.\n",
      " |      quotechar : str, default '\\\"'\n",
      " |          String of length 1. Character used to quote fields.\n",
      " |      line_terminator : string, optional\n",
      " |          The newline character or character sequence to use in the output\n",
      " |          file. Defaults to `os.linesep`, which depends on the OS in which\n",
      " |          this method is called ('\\n' for linux, '\\r\\n' for Windows, i.e.).\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      chunksize : int or None\n",
      " |          Rows to write at a time.\n",
      " |      tupleize_cols : bool, default False\n",
      " |          Write MultiIndex columns as a list of tuples (if True) or in\n",
      " |          the new, expanded format, where each MultiIndex column is a row\n",
      " |          in the CSV (if False).\n",
      " |      \n",
      " |          .. deprecated:: 0.21.0\n",
      " |             This argument will be removed and will always write each row\n",
      " |             of the multi-index as a separate row in the CSV file.\n",
      " |      date_format : str, default None\n",
      " |          Format string for datetime objects.\n",
      " |      doublequote : bool, default True\n",
      " |          Control quoting of `quotechar` inside a field.\n",
      " |      escapechar : str, default None\n",
      " |          String of length 1. Character used to escape `sep` and `quotechar`\n",
      " |          when appropriate.\n",
      " |      decimal : str, default '.'\n",
      " |          Character recognized as decimal separator. E.g. use ',' for\n",
      " |          European data.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      None or str\n",
      " |          If path_or_buf is None, returns the resulting csv format as a\n",
      " |          string. Otherwise returns None.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      read_csv : Load a CSV file into a DataFrame.\n",
      " |      to_excel : Load an Excel file into a DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'name': ['Raphael', 'Donatello'],\n",
      " |      ...                    'mask': ['red', 'purple'],\n",
      " |      ...                    'weapon': ['sai', 'bo staff']})\n",
      " |      >>> df.to_csv(index=False)\n",
      " |      'name,mask,weapon\\nRaphael,red,sai\\nDonatello,purple,bo staff\\n'\n",
      " |  \n",
      " |  to_dict(self, into=<class 'dict'>)\n",
      " |      Convert Series to {label -> value} dict or dict-like object.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      into : class, default dict\n",
      " |          The collections.Mapping subclass to use as the return\n",
      " |          object. Can be the actual class or an empty\n",
      " |          instance of the mapping type you want.  If you want a\n",
      " |          collections.defaultdict, you must pass it initialized.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      value_dict : collections.Mapping\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s.to_dict()\n",
      " |      {0: 1, 1: 2, 2: 3, 3: 4}\n",
      " |      >>> from collections import OrderedDict, defaultdict\n",
      " |      >>> s.to_dict(OrderedDict)\n",
      " |      OrderedDict([(0, 1), (1, 2), (2, 3), (3, 4)])\n",
      " |      >>> dd = defaultdict(list)\n",
      " |      >>> s.to_dict(dd)\n",
      " |      defaultdict(<type 'list'>, {0: 1, 1: 2, 2: 3, 3: 4})\n",
      " |  \n",
      " |  to_frame(self, name=None)\n",
      " |      Convert Series to DataFrame.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      name : object, default None\n",
      " |          The passed name should substitute for the series name (if it has\n",
      " |          one).\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      data_frame : DataFrame\n",
      " |  \n",
      " |  to_period(self, freq=None, copy=True)\n",
      " |      Convert Series from DatetimeIndex to PeriodIndex with desired\n",
      " |      frequency (inferred from index if not passed).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      freq : string, default\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      ts : Series with PeriodIndex\n",
      " |  \n",
      " |  to_sparse(self, kind='block', fill_value=None)\n",
      " |      Convert Series to SparseSeries.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      kind : {'block', 'integer'}\n",
      " |      fill_value : float, defaults to NaN (missing)\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      sp : SparseSeries\n",
      " |  \n",
      " |  to_string(self, buf=None, na_rep='NaN', float_format=None, header=True, index=True, length=False, dtype=False, name=False, max_rows=None)\n",
      " |      Render a string representation of the Series.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      buf : StringIO-like, optional\n",
      " |          buffer to write to\n",
      " |      na_rep : string, optional\n",
      " |          string representation of NAN to use, default 'NaN'\n",
      " |      float_format : one-parameter function, optional\n",
      " |          formatter function to apply to columns' elements if they are floats\n",
      " |          default None\n",
      " |      header : boolean, default True\n",
      " |          Add the Series header (index name)\n",
      " |      index : bool, optional\n",
      " |          Add index (row) labels, default True\n",
      " |      length : boolean, default False\n",
      " |          Add the Series length\n",
      " |      dtype : boolean, default False\n",
      " |          Add the Series dtype\n",
      " |      name : boolean, default False\n",
      " |          Add the Series name if not None\n",
      " |      max_rows : int, optional\n",
      " |          Maximum number of rows to show before truncating. If None, show\n",
      " |          all.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      formatted : string (if not buffer passed)\n",
      " |  \n",
      " |  to_timestamp(self, freq=None, how='start', copy=True)\n",
      " |      Cast to datetimeindex of timestamps, at *beginning* of period.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      freq : string, default frequency of PeriodIndex\n",
      " |          Desired frequency\n",
      " |      how : {'s', 'e', 'start', 'end'}\n",
      " |          Convention for converting period to timestamp; start of period\n",
      " |          vs. end\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      ts : Series with DatetimeIndex\n",
      " |  \n",
      " |  transform(self, func, axis=0, *args, **kwargs)\n",
      " |      Call ``func`` on self producing a Series with transformed values\n",
      " |      and that has the same axis length as self.\n",
      " |      \n",
      " |      .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      func : function, str, list or dict\n",
      " |          Function to use for transforming the data. If a function, must either\n",
      " |          work when passed a Series or when passed to Series.apply.\n",
      " |      \n",
      " |          Accepted combinations are:\n",
      " |      \n",
      " |          - function\n",
      " |          - string function name\n",
      " |          - list of functions and/or function names, e.g. ``[np.exp. 'sqrt']``\n",
      " |          - dict of axis labels -> functions, function names or list of such.\n",
      " |      axis : {0 or 'index'}\n",
      " |          Parameter needed for compatibility with DataFrame.\n",
      " |      *args\n",
      " |          Positional arguments to pass to `func`.\n",
      " |      **kwargs\n",
      " |          Keyword arguments to pass to `func`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          A Series that must have the same length as self.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError : If the returned Series has a different length than self.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.agg : Only perform aggregating type operations.\n",
      " |      Series.apply : Invoke function on a Series.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'A': range(3), 'B': range(1, 4)})\n",
      " |      >>> df\n",
      " |         A  B\n",
      " |      0  0  1\n",
      " |      1  1  2\n",
      " |      2  2  3\n",
      " |      >>> df.transform(lambda x: x + 1)\n",
      " |         A  B\n",
      " |      0  1  2\n",
      " |      1  2  3\n",
      " |      2  3  4\n",
      " |      \n",
      " |      Even though the resulting Series must have the same length as the\n",
      " |      input Series, it is possible to provide several input functions:\n",
      " |      \n",
      " |      >>> s = pd.Series(range(3))\n",
      " |      >>> s\n",
      " |      0    0\n",
      " |      1    1\n",
      " |      2    2\n",
      " |      dtype: int64\n",
      " |      >>> s.transform([np.sqrt, np.exp])\n",
      " |             sqrt        exp\n",
      " |      0  0.000000   1.000000\n",
      " |      1  1.000000   2.718282\n",
      " |      2  1.414214   7.389056\n",
      " |  \n",
      " |  truediv(self, other, level=None, fill_value=None, axis=0)\n",
      " |      Floating division of series and other, element-wise (binary operator `truediv`).\n",
      " |      \n",
      " |      Equivalent to ``series / other``, but with support to substitute a fill_value for\n",
      " |      missing data in one of the inputs.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or scalar value\n",
      " |      fill_value : None or float value, default None (NaN)\n",
      " |          Fill existing missing (NaN) values, and any new element needed for\n",
      " |          successful Series alignment, with this value before computation.\n",
      " |          If data in both corresponding Series locations is missing\n",
      " |          the result will be missing\n",
      " |      level : int or name\n",
      " |          Broadcast across a level, matching Index values on the\n",
      " |          passed MultiIndex level\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      result : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rtruediv\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = pd.Series([1, 1, 1, np.nan], index=['a', 'b', 'c', 'd'])\n",
      " |      >>> a\n",
      " |      a    1.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    NaN\n",
      " |      dtype: float64\n",
      " |      >>> b = pd.Series([1, np.nan, 1, np.nan], index=['a', 'b', 'd', 'e'])\n",
      " |      >>> b\n",
      " |      a    1.0\n",
      " |      b    NaN\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |      >>> a.add(b, fill_value=0)\n",
      " |      a    2.0\n",
      " |      b    1.0\n",
      " |      c    1.0\n",
      " |      d    1.0\n",
      " |      e    NaN\n",
      " |      dtype: float64\n",
      " |  \n",
      " |  unique(self)\n",
      " |      Return unique values of Series object.\n",
      " |      \n",
      " |      Uniques are returned in order of appearance. Hash table-based unique,\n",
      " |      therefore does NOT sort.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      ndarray or ExtensionArray\n",
      " |          The unique values returned as a NumPy array. In case of an\n",
      " |          extension-array backed Series, a new\n",
      " |          :class:`~api.extensions.ExtensionArray` of that type with just\n",
      " |          the unique values is returned. This includes\n",
      " |      \n",
      " |          * Categorical\n",
      " |          * Period\n",
      " |          * Datetime with Timezone\n",
      " |          * Interval\n",
      " |          * Sparse\n",
      " |          * IntegerNA\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      unique : Top-level unique method for any 1-d array-like object.\n",
      " |      Index.unique : Return Index with unique values from an Index object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> pd.Series([2, 1, 3, 3], name='A').unique()\n",
      " |      array([2, 1, 3])\n",
      " |      \n",
      " |      >>> pd.Series([pd.Timestamp('2016-01-01') for _ in range(3)]).unique()\n",
      " |      array(['2016-01-01T00:00:00.000000000'], dtype='datetime64[ns]')\n",
      " |      \n",
      " |      >>> pd.Series([pd.Timestamp('2016-01-01', tz='US/Eastern')\n",
      " |      ...            for _ in range(3)]).unique()\n",
      " |      <DatetimeArray>\n",
      " |      ['2016-01-01 00:00:00-05:00']\n",
      " |      Length: 1, dtype: datetime64[ns, US/Eastern]\n",
      " |      \n",
      " |      An unordered Categorical will return categories in the order of\n",
      " |      appearance.\n",
      " |      \n",
      " |      >>> pd.Series(pd.Categorical(list('baabc'))).unique()\n",
      " |      [b, a, c]\n",
      " |      Categories (3, object): [b, a, c]\n",
      " |      \n",
      " |      An ordered Categorical preserves the category ordering.\n",
      " |      \n",
      " |      >>> pd.Series(pd.Categorical(list('baabc'), categories=list('abc'),\n",
      " |      ...                          ordered=True)).unique()\n",
      " |      [b, a, c]\n",
      " |      Categories (3, object): [a < b < c]\n",
      " |  \n",
      " |  unstack(self, level=-1, fill_value=None)\n",
      " |      Unstack, a.k.a. pivot, Series with MultiIndex to produce DataFrame.\n",
      " |      The level involved will automatically get sorted.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      level : int, string, or list of these, default last level\n",
      " |          Level(s) to unstack, can pass level name\n",
      " |      fill_value : replace NaN with this value if the unstack produces\n",
      " |          missing values\n",
      " |      \n",
      " |          .. versionadded:: 0.18.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      unstacked : DataFrame\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4],\n",
      " |      ...     index=pd.MultiIndex.from_product([['one', 'two'], ['a', 'b']]))\n",
      " |      >>> s\n",
      " |      one  a    1\n",
      " |           b    2\n",
      " |      two  a    3\n",
      " |           b    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.unstack(level=-1)\n",
      " |           a  b\n",
      " |      one  1  2\n",
      " |      two  3  4\n",
      " |      \n",
      " |      >>> s.unstack(level=0)\n",
      " |         one  two\n",
      " |      a    1    3\n",
      " |      b    2    4\n",
      " |  \n",
      " |  update(self, other)\n",
      " |      Modify Series in place using non-NA values from passed\n",
      " |      Series. Aligns on index.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s.update(pd.Series([4, 5, 6]))\n",
      " |      >>> s\n",
      " |      0    4\n",
      " |      1    5\n",
      " |      2    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s = pd.Series(['a', 'b', 'c'])\n",
      " |      >>> s.update(pd.Series(['d', 'e'], index=[0, 2]))\n",
      " |      >>> s\n",
      " |      0    d\n",
      " |      1    b\n",
      " |      2    e\n",
      " |      dtype: object\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s.update(pd.Series([4, 5, 6, 7, 8]))\n",
      " |      >>> s\n",
      " |      0    4\n",
      " |      1    5\n",
      " |      2    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      If ``other`` contains NaNs the corresponding values are not updated\n",
      " |      in the original Series.\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s.update(pd.Series([4, np.nan, 6]))\n",
      " |      >>> s\n",
      " |      0    4\n",
      " |      1    2\n",
      " |      2    6\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  valid(self, inplace=False, **kwargs)\n",
      " |      Return Series without null values.\n",
      " |      \n",
      " |      .. deprecated:: 0.23.0\n",
      " |          Use :meth:`Series.dropna` instead.\n",
      " |  \n",
      " |  var(self, axis=None, skipna=None, level=None, ddof=1, numeric_only=None, **kwargs)\n",
      " |      Return unbiased variance over requested axis.\n",
      " |      \n",
      " |      Normalized by N-1 by default. This can be changed using the ddof argument\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {index (0)}\n",
      " |      skipna : boolean, default True\n",
      " |          Exclude NA/null values. If an entire row/column is NA, the result\n",
      " |          will be NA\n",
      " |      level : int or level name, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), count along a\n",
      " |          particular level, collapsing into a scalar\n",
      " |      ddof : int, default 1\n",
      " |          Delta Degrees of Freedom. The divisor used in calculations is N - ddof,\n",
      " |          where N represents the number of elements.\n",
      " |      numeric_only : boolean, default None\n",
      " |          Include only float, int, boolean columns. If None, will attempt to use\n",
      " |          everything, then use only numeric data. Not implemented for Series.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      var : scalar or Series (if level specified)\n",
      " |  \n",
      " |  view(self, dtype=None)\n",
      " |      Create a new view of the Series.\n",
      " |      \n",
      " |      This function will return a new Series with a view of the same\n",
      " |      underlying values in memory, optionally reinterpreted with a new data\n",
      " |      type. The new data type must preserve the same size in bytes as to not\n",
      " |      cause index misalignment.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dtype : data type\n",
      " |          Data type object or one of their string representations.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series\n",
      " |          A new Series object as a view of the same data in memory.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.view : Equivalent numpy function to create a new view of\n",
      " |          the same data in memory.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Series are instantiated with ``dtype=float64`` by default. While\n",
      " |      ``numpy.ndarray.view()`` will return a view with the same data type as\n",
      " |      the original array, ``Series.view()`` (without specified dtype)\n",
      " |      will try using ``float64`` and may fail if the original data type size\n",
      " |      in bytes is not the same.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([-2, -1, 0, 1, 2], dtype='int8')\n",
      " |      >>> s\n",
      " |      0   -2\n",
      " |      1   -1\n",
      " |      2    0\n",
      " |      3    1\n",
      " |      4    2\n",
      " |      dtype: int8\n",
      " |      \n",
      " |      The 8 bit signed integer representation of `-1` is `0b11111111`, but\n",
      " |      the same bytes represent 255 if read as an 8 bit unsigned integer:\n",
      " |      \n",
      " |      >>> us = s.view('uint8')\n",
      " |      >>> us\n",
      " |      0    254\n",
      " |      1    255\n",
      " |      2      0\n",
      " |      3      1\n",
      " |      4      2\n",
      " |      dtype: uint8\n",
      " |      \n",
      " |      The views share the same underlying values:\n",
      " |      \n",
      " |      >>> us[0] = 128\n",
      " |      >>> s\n",
      " |      0   -128\n",
      " |      1     -1\n",
      " |      2      0\n",
      " |      3      1\n",
      " |      4      2\n",
      " |      dtype: int8\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Class methods defined here:\n",
      " |  \n",
      " |  from_array(arr, index=None, name=None, dtype=None, copy=False, fastpath=False) from builtins.type\n",
      " |      Construct Series from array.\n",
      " |      \n",
      " |      .. deprecated :: 0.23.0\n",
      " |          Use pd.Series(..) constructor instead.\n",
      " |  \n",
      " |  from_csv(path, sep=',', parse_dates=True, header=None, index_col=0, encoding=None, infer_datetime_format=False) from builtins.type\n",
      " |      Read CSV file.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          Use :func:`pandas.read_csv` instead.\n",
      " |      \n",
      " |      It is preferable to use the more powerful :func:`pandas.read_csv`\n",
      " |      for most general purposes, but ``from_csv`` makes for an easy\n",
      " |      roundtrip to and from a file (the exact counterpart of\n",
      " |      ``to_csv``), especially with a time Series.\n",
      " |      \n",
      " |      This method only differs from :func:`pandas.read_csv` in some defaults:\n",
      " |      \n",
      " |      - `index_col` is ``0`` instead of ``None`` (take first column as index\n",
      " |        by default)\n",
      " |      - `header` is ``None`` instead of ``0`` (the first row is not used as\n",
      " |        the column names)\n",
      " |      - `parse_dates` is ``True`` instead of ``False`` (try parsing the index\n",
      " |        as datetime by default)\n",
      " |      \n",
      " |      With :func:`pandas.read_csv`, the option ``squeeze=True`` can be used\n",
      " |      to return a Series like ``from_csv``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path : string file path or file handle / StringIO\n",
      " |      sep : string, default ','\n",
      " |          Field delimiter\n",
      " |      parse_dates : boolean, default True\n",
      " |          Parse dates. Different default from read_table\n",
      " |      header : int, default None\n",
      " |          Row to use as header (skip prior rows)\n",
      " |      index_col : int or sequence, default 0\n",
      " |          Column to use for index. If a sequence is given, a MultiIndex\n",
      " |          is used. Different default from read_table\n",
      " |      encoding : string, optional\n",
      " |          a string representing the encoding to use if the contents are\n",
      " |          non-ascii, for python versions prior to 3\n",
      " |      infer_datetime_format : boolean, default False\n",
      " |          If True and `parse_dates` is True for a column, try to infer the\n",
      " |          datetime format based on the first datetime string. If the format\n",
      " |          can be inferred, there often will be a large parsing speed-up.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      y : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      read_csv\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data descriptors defined here:\n",
      " |  \n",
      " |  asobject\n",
      " |      Return object Series which contains boxed values.\n",
      " |      \n",
      " |      .. deprecated :: 0.23.0\n",
      " |      \n",
      " |         Use ``astype(object)`` instead.\n",
      " |      \n",
      " |      *this is an internal non-public method*\n",
      " |  \n",
      " |  axes\n",
      " |      Return a list of the row axis labels.\n",
      " |  \n",
      " |  dtype\n",
      " |      Return the dtype object of the underlying data.\n",
      " |  \n",
      " |  dtypes\n",
      " |      Return the dtype object of the underlying data.\n",
      " |  \n",
      " |  ftype\n",
      " |      Return if the data is sparse|dense.\n",
      " |  \n",
      " |  ftypes\n",
      " |      Return if the data is sparse|dense.\n",
      " |  \n",
      " |  hasnans\n",
      " |      Return if I have any nans; enables various perf speedups.\n",
      " |  \n",
      " |  imag\n",
      " |      Return imag value of vector.\n",
      " |  \n",
      " |  index\n",
      " |      The index (axis labels) of the Series.\n",
      " |  \n",
      " |  name\n",
      " |      Return name of the Series.\n",
      " |  \n",
      " |  real\n",
      " |      Return the real value of vector.\n",
      " |  \n",
      " |  values\n",
      " |      Return Series as ndarray or ndarray-like depending on the dtype.\n",
      " |      \n",
      " |      .. warning::\n",
      " |      \n",
      " |         We recommend using :attr:`Series.array` or\n",
      " |         :meth:`Series.to_numpy`, depending on whether you need\n",
      " |         a reference to the underlying data or a NumPy array.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      arr : numpy.ndarray or ndarray-like\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.array : Reference to the underlying data.\n",
      " |      Series.to_numpy : A NumPy array representing the underlying data.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> pd.Series([1, 2, 3]).values\n",
      " |      array([1, 2, 3])\n",
      " |      \n",
      " |      >>> pd.Series(list('aabc')).values\n",
      " |      array(['a', 'a', 'b', 'c'], dtype=object)\n",
      " |      \n",
      " |      >>> pd.Series(list('aabc')).astype('category').values\n",
      " |      [a, a, b, c]\n",
      " |      Categories (3, object): [a, b, c]\n",
      " |      \n",
      " |      Timezone aware datetime data is converted to UTC:\n",
      " |      \n",
      " |      >>> pd.Series(pd.date_range('20130101', periods=3,\n",
      " |      ...                         tz='US/Eastern')).values\n",
      " |      array(['2013-01-01T05:00:00.000000000',\n",
      " |             '2013-01-02T05:00:00.000000000',\n",
      " |             '2013-01-03T05:00:00.000000000'], dtype='datetime64[ns]')\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data and other attributes defined here:\n",
      " |  \n",
      " |  cat = <class 'pandas.core.arrays.categorical.CategoricalAccessor'>\n",
      " |      Accessor object for categorical properties of the Series values.\n",
      " |      \n",
      " |      Be aware that assigning to `categories` is a inplace operation, while all\n",
      " |      methods return new categorical data per default (but can be called with\n",
      " |      `inplace=True`).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      data : Series or CategoricalIndex\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s.cat.categories\n",
      " |      >>> s.cat.categories = list('abc')\n",
      " |      >>> s.cat.rename_categories(list('cab'))\n",
      " |      >>> s.cat.reorder_categories(list('cab'))\n",
      " |      >>> s.cat.add_categories(['d','e'])\n",
      " |      >>> s.cat.remove_categories(['d'])\n",
      " |      >>> s.cat.remove_unused_categories()\n",
      " |      >>> s.cat.set_categories(list('abcde'))\n",
      " |      >>> s.cat.as_ordered()\n",
      " |      >>> s.cat.as_unordered()\n",
      " |  \n",
      " |  dt = <class 'pandas.core.indexes.accessors.CombinedDatetimelikePropert...\n",
      " |      Accessor object for datetimelike properties of the Series values.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s.dt.hour\n",
      " |      >>> s.dt.second\n",
      " |      >>> s.dt.quarter\n",
      " |      \n",
      " |      Returns a Series indexed like the original Series.\n",
      " |      Raises TypeError if the Series does not contain datetimelike values.\n",
      " |  \n",
      " |  plot = <class 'pandas.plotting._core.SeriesPlotMethods'>\n",
      " |      Series plotting accessor and method.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s.plot.line()\n",
      " |      >>> s.plot.bar()\n",
      " |      >>> s.plot.hist()\n",
      " |      \n",
      " |      Plotting methods can also be accessed by calling the accessor as a method\n",
      " |      with the ``kind`` argument:\n",
      " |      ``s.plot(kind='line')`` is equivalent to ``s.plot.line()``\n",
      " |  \n",
      " |  sparse = <class 'pandas.core.arrays.sparse.SparseAccessor'>\n",
      " |      Accessor for SparseSparse from other sparse matrix data types.\n",
      " |  \n",
      " |  str = <class 'pandas.core.strings.StringMethods'>\n",
      " |      Vectorized string functions for Series and Index. NAs stay NA unless\n",
      " |      handled otherwise by a particular method. Patterned after Python's string\n",
      " |      methods, with some inspiration from R's stringr package.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s.str.split('_')\n",
      " |      >>> s.str.replace('_', '')\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Methods inherited from pandas.core.base.IndexOpsMixin:\n",
      " |  \n",
      " |  __iter__(self)\n",
      " |      Return an iterator of the values.\n",
      " |      \n",
      " |      These are each a scalar type, which is a Python scalar\n",
      " |      (for str, int, float) or a pandas scalar\n",
      " |      (for Timestamp/Timedelta/Interval/Period)\n",
      " |  \n",
      " |  factorize(self, sort=False, na_sentinel=-1)\n",
      " |      Encode the object as an enumerated type or categorical variable.\n",
      " |      \n",
      " |      This method is useful for obtaining a numeric representation of an\n",
      " |      array when all that matters is identifying distinct values. `factorize`\n",
      " |      is available as both a top-level function :func:`pandas.factorize`,\n",
      " |      and as a method :meth:`Series.factorize` and :meth:`Index.factorize`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      sort : boolean, default False\n",
      " |          Sort `uniques` and shuffle `labels` to maintain the\n",
      " |          relationship.\n",
      " |      \n",
      " |      na_sentinel : int, default -1\n",
      " |          Value to mark \"not found\".\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      labels : ndarray\n",
      " |          An integer ndarray that's an indexer into `uniques`.\n",
      " |          ``uniques.take(labels)`` will have the same values as `values`.\n",
      " |      uniques : ndarray, Index, or Categorical\n",
      " |          The unique valid values. When `values` is Categorical, `uniques`\n",
      " |          is a Categorical. When `values` is some other pandas object, an\n",
      " |          `Index` is returned. Otherwise, a 1-D ndarray is returned.\n",
      " |      \n",
      " |          .. note ::\n",
      " |      \n",
      " |             Even if there's a missing value in `values`, `uniques` will\n",
      " |             *not* contain an entry for it.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      cut : Discretize continuous-valued array.\n",
      " |      unique : Find the unique value in an array.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      These examples all show factorize as a top-level method like\n",
      " |      ``pd.factorize(values)``. The results are identical for methods like\n",
      " |      :meth:`Series.factorize`.\n",
      " |      \n",
      " |      >>> labels, uniques = pd.factorize(['b', 'b', 'a', 'c', 'b'])\n",
      " |      >>> labels\n",
      " |      array([0, 0, 1, 2, 0])\n",
      " |      >>> uniques\n",
      " |      array(['b', 'a', 'c'], dtype=object)\n",
      " |      \n",
      " |      With ``sort=True``, the `uniques` will be sorted, and `labels` will be\n",
      " |      shuffled so that the relationship is the maintained.\n",
      " |      \n",
      " |      >>> labels, uniques = pd.factorize(['b', 'b', 'a', 'c', 'b'], sort=True)\n",
      " |      >>> labels\n",
      " |      array([1, 1, 0, 2, 1])\n",
      " |      >>> uniques\n",
      " |      array(['a', 'b', 'c'], dtype=object)\n",
      " |      \n",
      " |      Missing values are indicated in `labels` with `na_sentinel`\n",
      " |      (``-1`` by default). Note that missing values are never\n",
      " |      included in `uniques`.\n",
      " |      \n",
      " |      >>> labels, uniques = pd.factorize(['b', None, 'a', 'c', 'b'])\n",
      " |      >>> labels\n",
      " |      array([ 0, -1,  1,  2,  0])\n",
      " |      >>> uniques\n",
      " |      array(['b', 'a', 'c'], dtype=object)\n",
      " |      \n",
      " |      Thus far, we've only factorized lists (which are internally coerced to\n",
      " |      NumPy arrays). When factorizing pandas objects, the type of `uniques`\n",
      " |      will differ. For Categoricals, a `Categorical` is returned.\n",
      " |      \n",
      " |      >>> cat = pd.Categorical(['a', 'a', 'c'], categories=['a', 'b', 'c'])\n",
      " |      >>> labels, uniques = pd.factorize(cat)\n",
      " |      >>> labels\n",
      " |      array([0, 0, 1])\n",
      " |      >>> uniques\n",
      " |      [a, c]\n",
      " |      Categories (3, object): [a, b, c]\n",
      " |      \n",
      " |      Notice that ``'b'`` is in ``uniques.categories``, despite not being\n",
      " |      present in ``cat.values``.\n",
      " |      \n",
      " |      For all other pandas objects, an Index of the appropriate type is\n",
      " |      returned.\n",
      " |      \n",
      " |      >>> cat = pd.Series(['a', 'a', 'c'])\n",
      " |      >>> labels, uniques = pd.factorize(cat)\n",
      " |      >>> labels\n",
      " |      array([0, 0, 1])\n",
      " |      >>> uniques\n",
      " |      Index(['a', 'c'], dtype='object')\n",
      " |  \n",
      " |  item(self)\n",
      " |      Return the first element of the underlying data as a python scalar.\n",
      " |  \n",
      " |  nunique(self, dropna=True)\n",
      " |      Return number of unique elements in the object.\n",
      " |      \n",
      " |      Excludes NA values by default.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dropna : boolean, default True\n",
      " |          Don't include NaN in the count.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      nunique : int\n",
      " |  \n",
      " |  to_list = tolist(self)\n",
      " |  \n",
      " |  to_numpy(self, dtype=None, copy=False)\n",
      " |      A NumPy ndarray representing the values in this Series or Index.\n",
      " |      \n",
      " |      .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dtype : str or numpy.dtype, optional\n",
      " |          The dtype to pass to :meth:`numpy.asarray`\n",
      " |      copy : bool, default False\n",
      " |          Whether to ensure that the returned value is a not a view on\n",
      " |          another array. Note that ``copy=False`` does not *ensure* that\n",
      " |          ``to_numpy()`` is no-copy. Rather, ``copy=True`` ensure that\n",
      " |          a copy is made, even if not strictly necessary.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      numpy.ndarray\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.array : Get the actual data stored within.\n",
      " |      Index.array : Get the actual data stored within.\n",
      " |      DataFrame.to_numpy : Similar method for DataFrame.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The returned array will be the same up to equality (values equal\n",
      " |      in `self` will be equal in the returned array; likewise for values\n",
      " |      that are not equal). When `self` contains an ExtensionArray, the\n",
      " |      dtype may be different. For example, for a category-dtype Series,\n",
      " |      ``to_numpy()`` will return a NumPy array and the categorical dtype\n",
      " |      will be lost.\n",
      " |      \n",
      " |      For NumPy dtypes, this will be a reference to the actual data stored\n",
      " |      in this Series or Index (assuming ``copy=False``). Modifying the result\n",
      " |      in place will modify the data stored in the Series or Index (not that\n",
      " |      we recommend doing that).\n",
      " |      \n",
      " |      For extension types, ``to_numpy()`` *may* require copying data and\n",
      " |      coercing the result to a NumPy type (possibly object), which may be\n",
      " |      expensive. When you need a no-copy reference to the underlying data,\n",
      " |      :attr:`Series.array` should be used instead.\n",
      " |      \n",
      " |      This table lays out the different dtypes and default return types of\n",
      " |      ``to_numpy()`` for various dtypes within pandas.\n",
      " |      \n",
      " |      ================== ================================\n",
      " |      dtype              array type\n",
      " |      ================== ================================\n",
      " |      category[T]        ndarray[T] (same dtype as input)\n",
      " |      period             ndarray[object] (Periods)\n",
      " |      interval           ndarray[object] (Intervals)\n",
      " |      IntegerNA          ndarray[object]\n",
      " |      datetime64[ns]     datetime64[ns]\n",
      " |      datetime64[ns, tz] ndarray[object] (Timestamps)\n",
      " |      ================== ================================\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> ser = pd.Series(pd.Categorical(['a', 'b', 'a']))\n",
      " |      >>> ser.to_numpy()\n",
      " |      array(['a', 'b', 'a'], dtype=object)\n",
      " |      \n",
      " |      Specify the `dtype` to control how datetime-aware data is represented.\n",
      " |      Use ``dtype=object`` to return an ndarray of pandas :class:`Timestamp`\n",
      " |      objects, each with the correct ``tz``.\n",
      " |      \n",
      " |      >>> ser = pd.Series(pd.date_range('2000', periods=2, tz=\"CET\"))\n",
      " |      >>> ser.to_numpy(dtype=object)\n",
      " |      array([Timestamp('2000-01-01 00:00:00+0100', tz='CET', freq='D'),\n",
      " |             Timestamp('2000-01-02 00:00:00+0100', tz='CET', freq='D')],\n",
      " |            dtype=object)\n",
      " |      \n",
      " |      Or ``dtype='datetime64[ns]'`` to return an ndarray of native\n",
      " |      datetime64 values. The values are converted to UTC and the timezone\n",
      " |      info is dropped.\n",
      " |      \n",
      " |      >>> ser.to_numpy(dtype=\"datetime64[ns]\")\n",
      " |      ... # doctest: +ELLIPSIS\n",
      " |      array(['1999-12-31T23:00:00.000000000', '2000-01-01T23:00:00...'],\n",
      " |            dtype='datetime64[ns]')\n",
      " |  \n",
      " |  tolist(self)\n",
      " |      Return a list of the values.\n",
      " |      \n",
      " |      These are each a scalar type, which is a Python scalar\n",
      " |      (for str, int, float) or a pandas scalar\n",
      " |      (for Timestamp/Timedelta/Interval/Period)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.ndarray.tolist\n",
      " |  \n",
      " |  transpose(self, *args, **kwargs)\n",
      " |      Return the transpose, which is by definition self.\n",
      " |  \n",
      " |  value_counts(self, normalize=False, sort=True, ascending=False, bins=None, dropna=True)\n",
      " |      Return a Series containing counts of unique values.\n",
      " |      \n",
      " |      The resulting object will be in descending order so that the\n",
      " |      first element is the most frequently-occurring element.\n",
      " |      Excludes NA values by default.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      normalize : boolean, default False\n",
      " |          If True then the object returned will contain the relative\n",
      " |          frequencies of the unique values.\n",
      " |      sort : boolean, default True\n",
      " |          Sort by values.\n",
      " |      ascending : boolean, default False\n",
      " |          Sort in ascending order.\n",
      " |      bins : integer, optional\n",
      " |          Rather than count values, group them into half-open bins,\n",
      " |          a convenience for ``pd.cut``, only works with numeric data.\n",
      " |      dropna : boolean, default True\n",
      " |          Don't include counts of NaN.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      counts : Series\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.count: Number of non-NA elements in a Series.\n",
      " |      DataFrame.count: Number of non-NA elements in a DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> index = pd.Index([3, 1, 2, 3, 4, np.nan])\n",
      " |      >>> index.value_counts()\n",
      " |      3.0    2\n",
      " |      4.0    1\n",
      " |      2.0    1\n",
      " |      1.0    1\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      With `normalize` set to `True`, returns the relative frequency by\n",
      " |      dividing all values by the sum of values.\n",
      " |      \n",
      " |      >>> s = pd.Series([3, 1, 2, 3, 4, np.nan])\n",
      " |      >>> s.value_counts(normalize=True)\n",
      " |      3.0    0.4\n",
      " |      4.0    0.2\n",
      " |      2.0    0.2\n",
      " |      1.0    0.2\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **bins**\n",
      " |      \n",
      " |      Bins can be useful for going from a continuous variable to a\n",
      " |      categorical variable; instead of counting unique\n",
      " |      apparitions of values, divide the index in the specified\n",
      " |      number of half-open bins.\n",
      " |      \n",
      " |      >>> s.value_counts(bins=3)\n",
      " |      (2.0, 3.0]      2\n",
      " |      (0.996, 2.0]    2\n",
      " |      (3.0, 4.0]      1\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      **dropna**\n",
      " |      \n",
      " |      With `dropna` set to `False` we can also see NaN index values.\n",
      " |      \n",
      " |      >>> s.value_counts(dropna=False)\n",
      " |      3.0    2\n",
      " |      NaN    1\n",
      " |      4.0    1\n",
      " |      2.0    1\n",
      " |      1.0    1\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data descriptors inherited from pandas.core.base.IndexOpsMixin:\n",
      " |  \n",
      " |  T\n",
      " |      Return the transpose, which is by definition self.\n",
      " |  \n",
      " |  __dict__\n",
      " |      dictionary for instance variables (if defined)\n",
      " |  \n",
      " |  __weakref__\n",
      " |      list of weak references to the object (if defined)\n",
      " |  \n",
      " |  array\n",
      " |      The ExtensionArray of the data backing this Series or Index.\n",
      " |      \n",
      " |      .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      array : ExtensionArray\n",
      " |          An ExtensionArray of the values stored within. For extension\n",
      " |          types, this is the actual array. For NumPy native types, this\n",
      " |          is a thin (no copy) wrapper around :class:`numpy.ndarray`.\n",
      " |      \n",
      " |          ``.array`` differs ``.values`` which may require converting the\n",
      " |          data to a different form.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Index.to_numpy : Similar method that always returns a NumPy array.\n",
      " |      Series.to_numpy : Similar method that always returns a NumPy array.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This table lays out the different array types for each extension\n",
      " |      dtype within pandas.\n",
      " |      \n",
      " |      ================== =============================\n",
      " |      dtype              array type\n",
      " |      ================== =============================\n",
      " |      category           Categorical\n",
      " |      period             PeriodArray\n",
      " |      interval           IntervalArray\n",
      " |      IntegerNA          IntegerArray\n",
      " |      datetime64[ns, tz] DatetimeArray\n",
      " |      ================== =============================\n",
      " |      \n",
      " |      For any 3rd-party extension types, the array type will be an\n",
      " |      ExtensionArray.\n",
      " |      \n",
      " |      For all remaining dtypes ``.array`` will be a\n",
      " |      :class:`arrays.NumpyExtensionArray` wrapping the actual ndarray\n",
      " |      stored within. If you absolutely need a NumPy array (possibly with\n",
      " |      copying / coercing data), then use :meth:`Series.to_numpy` instead.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      For regular NumPy types like int, and float, a PandasArray\n",
      " |      is returned.\n",
      " |      \n",
      " |      >>> pd.Series([1, 2, 3]).array\n",
      " |      <PandasArray>\n",
      " |      [1, 2, 3]\n",
      " |      Length: 3, dtype: int64\n",
      " |      \n",
      " |      For extension types, like Categorical, the actual ExtensionArray\n",
      " |      is returned\n",
      " |      \n",
      " |      >>> ser = pd.Series(pd.Categorical(['a', 'b', 'a']))\n",
      " |      >>> ser.array\n",
      " |      [a, b, a]\n",
      " |      Categories (2, object): [a, b]\n",
      " |  \n",
      " |  base\n",
      " |      Return the base object if the memory of the underlying data is shared.\n",
      " |  \n",
      " |  data\n",
      " |      Return the data pointer of the underlying data.\n",
      " |  \n",
      " |  empty\n",
      " |  \n",
      " |  flags\n",
      " |      Return the ndarray.flags for the underlying data.\n",
      " |  \n",
      " |  is_monotonic\n",
      " |      Return boolean if values in the object are\n",
      " |      monotonic_increasing.\n",
      " |      \n",
      " |      .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      is_monotonic : boolean\n",
      " |  \n",
      " |  is_monotonic_decreasing\n",
      " |      Return boolean if values in the object are\n",
      " |      monotonic_decreasing.\n",
      " |      \n",
      " |      .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      is_monotonic_decreasing : boolean\n",
      " |  \n",
      " |  is_monotonic_increasing\n",
      " |      Return boolean if values in the object are\n",
      " |      monotonic_increasing.\n",
      " |      \n",
      " |      .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      is_monotonic : boolean\n",
      " |  \n",
      " |  is_unique\n",
      " |      Return boolean if values in the object are unique.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      is_unique : boolean\n",
      " |  \n",
      " |  itemsize\n",
      " |      Return the size of the dtype of the item of the underlying data.\n",
      " |  \n",
      " |  nbytes\n",
      " |      Return the number of bytes in the underlying data.\n",
      " |  \n",
      " |  ndim\n",
      " |      Number of dimensions of the underlying data, by definition 1.\n",
      " |  \n",
      " |  shape\n",
      " |      Return a tuple of the shape of the underlying data.\n",
      " |  \n",
      " |  size\n",
      " |      Return the number of elements in the underlying data.\n",
      " |  \n",
      " |  strides\n",
      " |      Return the strides of the underlying data.\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data and other attributes inherited from pandas.core.base.IndexOpsMixin:\n",
      " |  \n",
      " |  __array_priority__ = 1000\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Methods inherited from pandas.core.generic.NDFrame:\n",
      " |  \n",
      " |  __abs__(self)\n",
      " |  \n",
      " |  __bool__ = __nonzero__(self)\n",
      " |  \n",
      " |  __contains__(self, key)\n",
      " |      True if the key is in the info axis\n",
      " |  \n",
      " |  __copy__(self, deep=True)\n",
      " |  \n",
      " |  __deepcopy__(self, memo=None)\n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      memo, default None\n",
      " |          Standard signature. Unused\n",
      " |  \n",
      " |  __delitem__(self, key)\n",
      " |      Delete item\n",
      " |  \n",
      " |  __finalize__(self, other, method=None, **kwargs)\n",
      " |      Propagate metadata from other to self.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : the object from which to get the attributes that we are going\n",
      " |          to propagate\n",
      " |      method : optional, a passed method name ; possibly to take different\n",
      " |          types of propagation actions based on this\n",
      " |  \n",
      " |  __getattr__(self, name)\n",
      " |      After regular attribute access, try looking up the name\n",
      " |      This allows simpler access to columns for interactive use.\n",
      " |  \n",
      " |  __getstate__(self)\n",
      " |  \n",
      " |  __hash__(self)\n",
      " |      Return hash(self).\n",
      " |  \n",
      " |  __invert__(self)\n",
      " |  \n",
      " |  __neg__(self)\n",
      " |  \n",
      " |  __nonzero__(self)\n",
      " |  \n",
      " |  __pos__(self)\n",
      " |  \n",
      " |  __round__(self, decimals=0)\n",
      " |  \n",
      " |  __setattr__(self, name, value)\n",
      " |      After regular attribute access, try setting the name\n",
      " |      This allows simpler access to columns for interactive use.\n",
      " |  \n",
      " |  __setstate__(self, state)\n",
      " |  \n",
      " |  abs(self)\n",
      " |      Return a Series/DataFrame with absolute numeric value of each element.\n",
      " |      \n",
      " |      This function only applies to elements that are all numeric.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      abs\n",
      " |          Series/DataFrame containing the absolute value of each element.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.absolute : Calculate the absolute value element-wise.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      For ``complex`` inputs, ``1.2 + 1j``, the absolute value is\n",
      " |      :math:`\\sqrt{ a^2 + b^2 }`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Absolute numeric values in a Series.\n",
      " |      \n",
      " |      >>> s = pd.Series([-1.10, 2, -3.33, 4])\n",
      " |      >>> s.abs()\n",
      " |      0    1.10\n",
      " |      1    2.00\n",
      " |      2    3.33\n",
      " |      3    4.00\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Absolute numeric values in a Series with complex numbers.\n",
      " |      \n",
      " |      >>> s = pd.Series([1.2 + 1j])\n",
      " |      >>> s.abs()\n",
      " |      0    1.56205\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Absolute numeric values in a Series with a Timedelta element.\n",
      " |      \n",
      " |      >>> s = pd.Series([pd.Timedelta('1 days')])\n",
      " |      >>> s.abs()\n",
      " |      0   1 days\n",
      " |      dtype: timedelta64[ns]\n",
      " |      \n",
      " |      Select rows with data closest to certain value using argsort (from\n",
      " |      `StackOverflow <https://stackoverflow.com/a/17758115>`__).\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\n",
      " |      ...     'a': [4, 5, 6, 7],\n",
      " |      ...     'b': [10, 20, 30, 40],\n",
      " |      ...     'c': [100, 50, -30, -50]\n",
      " |      ... })\n",
      " |      >>> df\n",
      " |           a    b    c\n",
      " |      0    4   10  100\n",
      " |      1    5   20   50\n",
      " |      2    6   30  -30\n",
      " |      3    7   40  -50\n",
      " |      >>> df.loc[(df.c - 43).abs().argsort()]\n",
      " |           a    b    c\n",
      " |      1    5   20   50\n",
      " |      0    4   10  100\n",
      " |      2    6   30  -30\n",
      " |      3    7   40  -50\n",
      " |  \n",
      " |  add_prefix(self, prefix)\n",
      " |      Prefix labels with string `prefix`.\n",
      " |      \n",
      " |      For Series, the row labels are prefixed.\n",
      " |      For DataFrame, the column labels are prefixed.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      prefix : str\n",
      " |          The string to add before each label.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          New Series or DataFrame with updated labels.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.add_suffix: Suffix row labels with string `suffix`.\n",
      " |      DataFrame.add_suffix: Suffix column labels with string `suffix`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.add_prefix('item_')\n",
      " |      item_0    1\n",
      " |      item_1    2\n",
      " |      item_2    3\n",
      " |      item_3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'A': [1, 2, 3, 4],  'B': [3, 4, 5, 6]})\n",
      " |      >>> df\n",
      " |         A  B\n",
      " |      0  1  3\n",
      " |      1  2  4\n",
      " |      2  3  5\n",
      " |      3  4  6\n",
      " |      \n",
      " |      >>> df.add_prefix('col_')\n",
      " |           col_A  col_B\n",
      " |      0       1       3\n",
      " |      1       2       4\n",
      " |      2       3       5\n",
      " |      3       4       6\n",
      " |  \n",
      " |  add_suffix(self, suffix)\n",
      " |      Suffix labels with string `suffix`.\n",
      " |      \n",
      " |      For Series, the row labels are suffixed.\n",
      " |      For DataFrame, the column labels are suffixed.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      suffix : str\n",
      " |          The string to add after each label.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          New Series or DataFrame with updated labels.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.add_prefix: Prefix row labels with string `prefix`.\n",
      " |      DataFrame.add_prefix: Prefix column labels with string `prefix`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.add_suffix('_item')\n",
      " |      0_item    1\n",
      " |      1_item    2\n",
      " |      2_item    3\n",
      " |      3_item    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'A': [1, 2, 3, 4],  'B': [3, 4, 5, 6]})\n",
      " |      >>> df\n",
      " |         A  B\n",
      " |      0  1  3\n",
      " |      1  2  4\n",
      " |      2  3  5\n",
      " |      3  4  6\n",
      " |      \n",
      " |      >>> df.add_suffix('_col')\n",
      " |           A_col  B_col\n",
      " |      0       1       3\n",
      " |      1       2       4\n",
      " |      2       3       5\n",
      " |      3       4       6\n",
      " |  \n",
      " |  as_blocks(self, copy=True)\n",
      " |      Convert the frame to a dict of dtype -> Constructor Types that each has\n",
      " |      a homogeneous dtype.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |      \n",
      " |      NOTE: the dtypes of the blocks WILL BE PRESERVED HERE (unlike in\n",
      " |            as_matrix)\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      copy : boolean, default True\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      values : a dict of dtype -> Constructor Types\n",
      " |  \n",
      " |  as_matrix(self, columns=None)\n",
      " |      Convert the frame to its Numpy-array representation.\n",
      " |      \n",
      " |      .. deprecated:: 0.23.0\n",
      " |          Use :meth:`DataFrame.values` instead.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      columns : list, optional, default:None\n",
      " |          If None, return all columns, otherwise, returns specified columns.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      values : ndarray\n",
      " |          If the caller is heterogeneous and contains booleans or objects,\n",
      " |          the result will be of dtype=object. See Notes.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.values\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Return is NOT a Numpy-matrix, rather, a Numpy-array.\n",
      " |      \n",
      " |      The dtype will be a lower-common-denominator dtype (implicit\n",
      " |      upcasting); that is to say if the dtypes (even of numeric types)\n",
      " |      are mixed, the one that accommodates all will be chosen. Use this\n",
      " |      with care if you are not dealing with the blocks.\n",
      " |      \n",
      " |      e.g. If the dtypes are float16 and float32, dtype will be upcast to\n",
      " |      float32.  If dtypes are int32 and uint8, dtype will be upcase to\n",
      " |      int32. By numpy.find_common_type convention, mixing int64 and uint64\n",
      " |      will result in a float64 dtype.\n",
      " |      \n",
      " |      This method is provided for backwards compatibility. Generally,\n",
      " |      it is recommended to use '.values'.\n",
      " |  \n",
      " |  asfreq(self, freq, method=None, how=None, normalize=False, fill_value=None)\n",
      " |      Convert TimeSeries to specified frequency.\n",
      " |      \n",
      " |      Optionally provide filling method to pad/backfill missing values.\n",
      " |      \n",
      " |      Returns the original data conformed to a new index with the specified\n",
      " |      frequency. ``resample`` is more appropriate if an operation, such as\n",
      " |      summarization, is necessary to represent the data at the new frequency.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      freq : DateOffset object, or string\n",
      " |      method : {'backfill'/'bfill', 'pad'/'ffill'}, default None\n",
      " |          Method to use for filling holes in reindexed Series (note this\n",
      " |          does not fill NaNs that already were present):\n",
      " |      \n",
      " |          * 'pad' / 'ffill': propagate last valid observation forward to next\n",
      " |            valid\n",
      " |          * 'backfill' / 'bfill': use NEXT valid observation to fill\n",
      " |      how : {'start', 'end'}, default end\n",
      " |          For PeriodIndex only, see PeriodIndex.asfreq\n",
      " |      normalize : bool, default False\n",
      " |          Whether to reset output index to midnight\n",
      " |      fill_value : scalar, optional\n",
      " |          Value to use for missing values, applied during upsampling (note\n",
      " |          this does not fill NaNs that already were present).\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      converted : same type as caller\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      reindex\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      To learn more about the frequency strings, please see `this link\n",
      " |      <http://pandas.pydata.org/pandas-docs/stable/timeseries.html#offset-aliases>`__.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Start by creating a series with 4 one minute timestamps.\n",
      " |      \n",
      " |      >>> index = pd.date_range('1/1/2000', periods=4, freq='T')\n",
      " |      >>> series = pd.Series([0.0, None, 2.0, 3.0], index=index)\n",
      " |      >>> df = pd.DataFrame({'s':series})\n",
      " |      >>> df\n",
      " |                             s\n",
      " |      2000-01-01 00:00:00    0.0\n",
      " |      2000-01-01 00:01:00    NaN\n",
      " |      2000-01-01 00:02:00    2.0\n",
      " |      2000-01-01 00:03:00    3.0\n",
      " |      \n",
      " |      Upsample the series into 30 second bins.\n",
      " |      \n",
      " |      >>> df.asfreq(freq='30S')\n",
      " |                             s\n",
      " |      2000-01-01 00:00:00    0.0\n",
      " |      2000-01-01 00:00:30    NaN\n",
      " |      2000-01-01 00:01:00    NaN\n",
      " |      2000-01-01 00:01:30    NaN\n",
      " |      2000-01-01 00:02:00    2.0\n",
      " |      2000-01-01 00:02:30    NaN\n",
      " |      2000-01-01 00:03:00    3.0\n",
      " |      \n",
      " |      Upsample again, providing a ``fill value``.\n",
      " |      \n",
      " |      >>> df.asfreq(freq='30S', fill_value=9.0)\n",
      " |                             s\n",
      " |      2000-01-01 00:00:00    0.0\n",
      " |      2000-01-01 00:00:30    9.0\n",
      " |      2000-01-01 00:01:00    NaN\n",
      " |      2000-01-01 00:01:30    9.0\n",
      " |      2000-01-01 00:02:00    2.0\n",
      " |      2000-01-01 00:02:30    9.0\n",
      " |      2000-01-01 00:03:00    3.0\n",
      " |      \n",
      " |      Upsample again, providing a ``method``.\n",
      " |      \n",
      " |      >>> df.asfreq(freq='30S', method='bfill')\n",
      " |                             s\n",
      " |      2000-01-01 00:00:00    0.0\n",
      " |      2000-01-01 00:00:30    NaN\n",
      " |      2000-01-01 00:01:00    NaN\n",
      " |      2000-01-01 00:01:30    2.0\n",
      " |      2000-01-01 00:02:00    2.0\n",
      " |      2000-01-01 00:02:30    3.0\n",
      " |      2000-01-01 00:03:00    3.0\n",
      " |  \n",
      " |  asof(self, where, subset=None)\n",
      " |      Return the last row(s) without any NaNs before `where`.\n",
      " |      \n",
      " |      The last row (for each element in `where`, if list) without any\n",
      " |      NaN is taken.\n",
      " |      In case of a :class:`~pandas.DataFrame`, the last row without NaN\n",
      " |      considering only the subset of columns (if not `None`)\n",
      " |      \n",
      " |      .. versionadded:: 0.19.0 For DataFrame\n",
      " |      \n",
      " |      If there is no good value, NaN is returned for a Series or\n",
      " |      a Series of NaN values for a DataFrame\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      where : date or array-like of dates\n",
      " |          Date(s) before which the last row(s) are returned.\n",
      " |      subset : str or array-like of str, default `None`\n",
      " |          For DataFrame, if not `None`, only use these columns to\n",
      " |          check for NaNs.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      scalar, Series, or DataFrame\n",
      " |      \n",
      " |         * scalar : when `self` is a Series and `where` is a scalar\n",
      " |         * Series: when `self` is a Series and `where` is an array-like,\n",
      " |           or when `self` is a DataFrame and `where` is a scalar\n",
      " |         * DataFrame : when `self` is a DataFrame and `where` is an\n",
      " |           array-like\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      merge_asof : Perform an asof merge. Similar to left join.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Dates are assumed to be sorted. Raises if this is not the case.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      A Series and a scalar `where`.\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, np.nan, 4], index=[10, 20, 30, 40])\n",
      " |      >>> s\n",
      " |      10    1.0\n",
      " |      20    2.0\n",
      " |      30    NaN\n",
      " |      40    4.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.asof(20)\n",
      " |      2.0\n",
      " |      \n",
      " |      For a sequence `where`, a Series is returned. The first value is\n",
      " |      NaN, because the first element of `where` is before the first\n",
      " |      index value.\n",
      " |      \n",
      " |      >>> s.asof([5, 20])\n",
      " |      5     NaN\n",
      " |      20    2.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Missing values are not considered. The following is ``2.0``, not\n",
      " |      NaN, even though NaN is at the index location for ``30``.\n",
      " |      \n",
      " |      >>> s.asof(30)\n",
      " |      2.0\n",
      " |      \n",
      " |      Take all columns into consideration\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'a': [10, 20, 30, 40, 50],\n",
      " |      ...                    'b': [None, None, None, None, 500]},\n",
      " |      ...                   index=pd.DatetimeIndex(['2018-02-27 09:01:00',\n",
      " |      ...                                           '2018-02-27 09:02:00',\n",
      " |      ...                                           '2018-02-27 09:03:00',\n",
      " |      ...                                           '2018-02-27 09:04:00',\n",
      " |      ...                                           '2018-02-27 09:05:00']))\n",
      " |      >>> df.asof(pd.DatetimeIndex(['2018-02-27 09:03:30',\n",
      " |      ...                           '2018-02-27 09:04:30']))\n",
      " |                            a   b\n",
      " |      2018-02-27 09:03:30 NaN NaN\n",
      " |      2018-02-27 09:04:30 NaN NaN\n",
      " |      \n",
      " |      Take a single column into consideration\n",
      " |      \n",
      " |      >>> df.asof(pd.DatetimeIndex(['2018-02-27 09:03:30',\n",
      " |      ...                           '2018-02-27 09:04:30']),\n",
      " |      ...         subset=['a'])\n",
      " |                               a   b\n",
      " |      2018-02-27 09:03:30   30.0 NaN\n",
      " |      2018-02-27 09:04:30   40.0 NaN\n",
      " |  \n",
      " |  astype(self, dtype, copy=True, errors='raise', **kwargs)\n",
      " |      Cast a pandas object to a specified dtype ``dtype``.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      dtype : data type, or dict of column name -> data type\n",
      " |          Use a numpy.dtype or Python type to cast entire pandas object to\n",
      " |          the same type. Alternatively, use {col: dtype, ...}, where col is a\n",
      " |          column label and dtype is a numpy.dtype or Python type to cast one\n",
      " |          or more of the DataFrame's columns to column-specific types.\n",
      " |      copy : bool, default True\n",
      " |          Return a copy when ``copy=True`` (be very careful setting\n",
      " |          ``copy=False`` as changes to values then may propagate to other\n",
      " |          pandas objects).\n",
      " |      errors : {'raise', 'ignore'}, default 'raise'\n",
      " |          Control raising of exceptions on invalid data for provided dtype.\n",
      " |      \n",
      " |          - ``raise`` : allow exceptions to be raised\n",
      " |          - ``ignore`` : suppress exceptions. On error return original object\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      kwargs : keyword arguments to pass on to the constructor\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      casted : same type as caller\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      to_datetime : Convert argument to datetime.\n",
      " |      to_timedelta : Convert argument to timedelta.\n",
      " |      to_numeric : Convert argument to a numeric type.\n",
      " |      numpy.ndarray.astype : Cast a numpy array to a specified type.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> ser = pd.Series([1, 2], dtype='int32')\n",
      " |      >>> ser\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      dtype: int32\n",
      " |      >>> ser.astype('int64')\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Convert to categorical type:\n",
      " |      \n",
      " |      >>> ser.astype('category')\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      dtype: category\n",
      " |      Categories (2, int64): [1, 2]\n",
      " |      \n",
      " |      Convert to ordered categorical type with custom ordering:\n",
      " |      \n",
      " |      >>> cat_dtype = pd.api.types.CategoricalDtype(\n",
      " |      ...                     categories=[2, 1], ordered=True)\n",
      " |      >>> ser.astype(cat_dtype)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      dtype: category\n",
      " |      Categories (2, int64): [2 < 1]\n",
      " |      \n",
      " |      Note that using ``copy=False`` and changing data on a new\n",
      " |      pandas object may propagate changes:\n",
      " |      \n",
      " |      >>> s1 = pd.Series([1,2])\n",
      " |      >>> s2 = s1.astype('int64', copy=False)\n",
      " |      >>> s2[0] = 10\n",
      " |      >>> s1  # note that s1[0] has changed too\n",
      " |      0    10\n",
      " |      1     2\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  at_time(self, time, asof=False, axis=None)\n",
      " |      Select values at particular time of day (e.g. 9:30AM).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      time : datetime.time or string\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |      \n",
      " |          .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      values_at_time : same type as caller\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the index is not  a :class:`DatetimeIndex`\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      between_time : Select values between particular times of the day.\n",
      " |      first : Select initial periods of time series based on a date offset.\n",
      " |      last : Select final periods of time series based on a date offset.\n",
      " |      DatetimeIndex.indexer_at_time : Get just the index locations for\n",
      " |          values at particular time of the day.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> i = pd.date_range('2018-04-09', periods=4, freq='12H')\n",
      " |      >>> ts = pd.DataFrame({'A': [1,2,3,4]}, index=i)\n",
      " |      >>> ts\n",
      " |                           A\n",
      " |      2018-04-09 00:00:00  1\n",
      " |      2018-04-09 12:00:00  2\n",
      " |      2018-04-10 00:00:00  3\n",
      " |      2018-04-10 12:00:00  4\n",
      " |      \n",
      " |      >>> ts.at_time('12:00')\n",
      " |                           A\n",
      " |      2018-04-09 12:00:00  2\n",
      " |      2018-04-10 12:00:00  4\n",
      " |  \n",
      " |  between_time(self, start_time, end_time, include_start=True, include_end=True, axis=None)\n",
      " |      Select values between particular times of the day (e.g., 9:00-9:30 AM).\n",
      " |      \n",
      " |      By setting ``start_time`` to be later than ``end_time``,\n",
      " |      you can get the times that are *not* between the two times.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      start_time : datetime.time or string\n",
      " |      end_time : datetime.time or string\n",
      " |      include_start : boolean, default True\n",
      " |      include_end : boolean, default True\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |      \n",
      " |          .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      values_between_time : same type as caller\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the index is not  a :class:`DatetimeIndex`\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      at_time : Select values at a particular time of the day.\n",
      " |      first : Select initial periods of time series based on a date offset.\n",
      " |      last : Select final periods of time series based on a date offset.\n",
      " |      DatetimeIndex.indexer_between_time : Get just the index locations for\n",
      " |          values between particular times of the day.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> i = pd.date_range('2018-04-09', periods=4, freq='1D20min')\n",
      " |      >>> ts = pd.DataFrame({'A': [1,2,3,4]}, index=i)\n",
      " |      >>> ts\n",
      " |                           A\n",
      " |      2018-04-09 00:00:00  1\n",
      " |      2018-04-10 00:20:00  2\n",
      " |      2018-04-11 00:40:00  3\n",
      " |      2018-04-12 01:00:00  4\n",
      " |      \n",
      " |      >>> ts.between_time('0:15', '0:45')\n",
      " |                           A\n",
      " |      2018-04-10 00:20:00  2\n",
      " |      2018-04-11 00:40:00  3\n",
      " |      \n",
      " |      You get the times that are *not* between two times by setting\n",
      " |      ``start_time`` later than ``end_time``:\n",
      " |      \n",
      " |      >>> ts.between_time('0:45', '0:15')\n",
      " |                           A\n",
      " |      2018-04-09 00:00:00  1\n",
      " |      2018-04-12 01:00:00  4\n",
      " |  \n",
      " |  bfill(self, axis=None, inplace=False, limit=None, downcast=None)\n",
      " |      Synonym for :meth:`DataFrame.fillna` with ``method='bfill'``.\n",
      " |  \n",
      " |  bool(self)\n",
      " |      Return the bool of a single element PandasObject.\n",
      " |      \n",
      " |      This must be a boolean scalar value, either True or False.  Raise a\n",
      " |      ValueError if the PandasObject does not have exactly 1 element, or that\n",
      " |      element is not boolean\n",
      " |  \n",
      " |  clip(self, lower=None, upper=None, axis=None, inplace=False, *args, **kwargs)\n",
      " |      Trim values at input threshold(s).\n",
      " |      \n",
      " |      Assigns values outside boundary to boundary values. Thresholds\n",
      " |      can be singular values or array like, and in the latter case\n",
      " |      the clipping is performed element-wise in the specified axis.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      lower : float or array_like, default None\n",
      " |          Minimum threshold value. All values below this\n",
      " |          threshold will be set to it.\n",
      " |      upper : float or array_like, default None\n",
      " |          Maximum threshold value. All values above this\n",
      " |          threshold will be set to it.\n",
      " |      axis : int or string axis name, optional\n",
      " |          Align object with lower and upper along the given axis.\n",
      " |      inplace : boolean, default False\n",
      " |          Whether to perform the operation in place on the data.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      *args, **kwargs\n",
      " |          Additional keywords have no effect but might be accepted\n",
      " |          for compatibility with numpy.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Same type as calling object with the values outside the\n",
      " |          clip boundaries replaced\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> data = {'col_0': [9, -3, 0, -1, 5], 'col_1': [-2, -7, 6, 8, -5]}\n",
      " |      >>> df = pd.DataFrame(data)\n",
      " |      >>> df\n",
      " |         col_0  col_1\n",
      " |      0      9     -2\n",
      " |      1     -3     -7\n",
      " |      2      0      6\n",
      " |      3     -1      8\n",
      " |      4      5     -5\n",
      " |      \n",
      " |      Clips per column using lower and upper thresholds:\n",
      " |      \n",
      " |      >>> df.clip(-4, 6)\n",
      " |         col_0  col_1\n",
      " |      0      6     -2\n",
      " |      1     -3     -4\n",
      " |      2      0      6\n",
      " |      3     -1      6\n",
      " |      4      5     -4\n",
      " |      \n",
      " |      Clips using specific lower and upper thresholds per column element:\n",
      " |      \n",
      " |      >>> t = pd.Series([2, -4, -1, 6, 3])\n",
      " |      >>> t\n",
      " |      0    2\n",
      " |      1   -4\n",
      " |      2   -1\n",
      " |      3    6\n",
      " |      4    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df.clip(t, t + 4, axis=0)\n",
      " |         col_0  col_1\n",
      " |      0      6      2\n",
      " |      1     -3     -4\n",
      " |      2      0      3\n",
      " |      3      6      8\n",
      " |      4      5      3\n",
      " |  \n",
      " |  clip_lower(self, threshold, axis=None, inplace=False)\n",
      " |      Trim values below a given threshold.\n",
      " |      \n",
      " |      .. deprecated:: 0.24.0\n",
      " |          Use clip(lower=threshold) instead.\n",
      " |      \n",
      " |      Elements below the `threshold` will be changed to match the\n",
      " |      `threshold` value(s). Threshold can be a single value or an array,\n",
      " |      in the latter case it performs the truncation element-wise.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      threshold : numeric or array-like\n",
      " |          Minimum value allowed. All values below threshold will be set to\n",
      " |          this value.\n",
      " |      \n",
      " |          * float : every value is compared to `threshold`.\n",
      " |          * array-like : The shape of `threshold` should match the object\n",
      " |            it's compared to. When `self` is a Series, `threshold` should be\n",
      " |            the length. When `self` is a DataFrame, `threshold` should 2-D\n",
      " |            and the same shape as `self` for ``axis=None``, or 1-D and the\n",
      " |            same length as the axis being compared.\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          Align `self` with `threshold` along the given axis.\n",
      " |      \n",
      " |      inplace : boolean, default False\n",
      " |          Whether to perform the operation in place on the data.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Original data with values trimmed.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.clip : General purpose method to trim Series values to given\n",
      " |          threshold(s).\n",
      " |      DataFrame.clip : General purpose method to trim DataFrame values to\n",
      " |          given threshold(s).\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Series single threshold clipping:\n",
      " |      \n",
      " |      >>> s = pd.Series([5, 6, 7, 8, 9])\n",
      " |      >>> s.clip(lower=8)\n",
      " |      0    8\n",
      " |      1    8\n",
      " |      2    8\n",
      " |      3    8\n",
      " |      4    9\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Series clipping element-wise using an array of thresholds. `threshold`\n",
      " |      should be the same length as the Series.\n",
      " |      \n",
      " |      >>> elemwise_thresholds = [4, 8, 7, 2, 5]\n",
      " |      >>> s.clip(lower=elemwise_thresholds)\n",
      " |      0    5\n",
      " |      1    8\n",
      " |      2    7\n",
      " |      3    8\n",
      " |      4    9\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      DataFrames can be compared to a scalar.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [1, 3, 5], \"B\": [2, 4, 6]})\n",
      " |      >>> df\n",
      " |         A  B\n",
      " |      0  1  2\n",
      " |      1  3  4\n",
      " |      2  5  6\n",
      " |      \n",
      " |      >>> df.clip(lower=3)\n",
      " |         A  B\n",
      " |      0  3  3\n",
      " |      1  3  4\n",
      " |      2  5  6\n",
      " |      \n",
      " |      Or to an array of values. By default, `threshold` should be the same\n",
      " |      shape as the DataFrame.\n",
      " |      \n",
      " |      >>> df.clip(lower=np.array([[3, 4], [2, 2], [6, 2]]))\n",
      " |         A  B\n",
      " |      0  3  4\n",
      " |      1  3  4\n",
      " |      2  6  6\n",
      " |      \n",
      " |      Control how `threshold` is broadcast with `axis`. In this case\n",
      " |      `threshold` should be the same length as the axis specified by\n",
      " |      `axis`.\n",
      " |      \n",
      " |      >>> df.clip(lower=[3, 3, 5], axis='index')\n",
      " |         A  B\n",
      " |      0  3  3\n",
      " |      1  3  4\n",
      " |      2  5  6\n",
      " |      \n",
      " |      >>> df.clip(lower=[4, 5], axis='columns')\n",
      " |         A  B\n",
      " |      0  4  5\n",
      " |      1  4  5\n",
      " |      2  5  6\n",
      " |  \n",
      " |  clip_upper(self, threshold, axis=None, inplace=False)\n",
      " |      Trim values above a given threshold.\n",
      " |      \n",
      " |      .. deprecated:: 0.24.0\n",
      " |          Use clip(upper=threshold) instead.\n",
      " |      \n",
      " |      Elements above the `threshold` will be changed to match the\n",
      " |      `threshold` value(s). Threshold can be a single value or an array,\n",
      " |      in the latter case it performs the truncation element-wise.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      threshold : numeric or array-like\n",
      " |          Maximum value allowed. All values above threshold will be set to\n",
      " |          this value.\n",
      " |      \n",
      " |          * float : every value is compared to `threshold`.\n",
      " |          * array-like : The shape of `threshold` should match the object\n",
      " |            it's compared to. When `self` is a Series, `threshold` should be\n",
      " |            the length. When `self` is a DataFrame, `threshold` should 2-D\n",
      " |            and the same shape as `self` for ``axis=None``, or 1-D and the\n",
      " |            same length as the axis being compared.\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          Align object with `threshold` along the given axis.\n",
      " |      inplace : boolean, default False\n",
      " |          Whether to perform the operation in place on the data.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Original data with values trimmed.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.clip : General purpose method to trim Series values to given\n",
      " |          threshold(s).\n",
      " |      DataFrame.clip : General purpose method to trim DataFrame values to\n",
      " |          given threshold(s).\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2, 3, 4, 5])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      4    5\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.clip(upper=3)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    3\n",
      " |      4    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> elemwise_thresholds = [5, 4, 3, 2, 1]\n",
      " |      >>> elemwise_thresholds\n",
      " |      [5, 4, 3, 2, 1]\n",
      " |      \n",
      " |      >>> s.clip(upper=elemwise_thresholds)\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    2\n",
      " |      4    1\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  convert_objects(self, convert_dates=True, convert_numeric=False, convert_timedeltas=True, copy=True)\n",
      " |      Attempt to infer better dtype for object columns.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      convert_dates : boolean, default True\n",
      " |          If True, convert to date where possible. If 'coerce', force\n",
      " |          conversion, with unconvertible values becoming NaT.\n",
      " |      convert_numeric : boolean, default False\n",
      " |          If True, attempt to coerce to numbers (including strings), with\n",
      " |          unconvertible values becoming NaN.\n",
      " |      convert_timedeltas : boolean, default True\n",
      " |          If True, convert to timedelta where possible. If 'coerce', force\n",
      " |          conversion, with unconvertible values becoming NaT.\n",
      " |      copy : boolean, default True\n",
      " |          If True, return a copy even if no copy is necessary (e.g. no\n",
      " |          conversion was done). Note: This is meant for internal use, and\n",
      " |          should not be confused with inplace.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      converted : same as input object\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      to_datetime : Convert argument to datetime.\n",
      " |      to_timedelta : Convert argument to timedelta.\n",
      " |      to_numeric : Convert argument to numeric type.\n",
      " |  \n",
      " |  copy(self, deep=True)\n",
      " |      Make a copy of this object's indices and data.\n",
      " |      \n",
      " |      When ``deep=True`` (default), a new object will be created with a\n",
      " |      copy of the calling object's data and indices. Modifications to\n",
      " |      the data or indices of the copy will not be reflected in the\n",
      " |      original object (see notes below).\n",
      " |      \n",
      " |      When ``deep=False``, a new object will be created without copying\n",
      " |      the calling object's data or index (only references to the data\n",
      " |      and index are copied). Any changes to the data of the original\n",
      " |      will be reflected in the shallow copy (and vice versa).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      deep : bool, default True\n",
      " |          Make a deep copy, including a copy of the data and the indices.\n",
      " |          With ``deep=False`` neither the indices nor the data are copied.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      copy : Series, DataFrame or Panel\n",
      " |          Object type matches caller.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      When ``deep=True``, data is copied but actual Python objects\n",
      " |      will not be copied recursively, only the reference to the object.\n",
      " |      This is in contrast to `copy.deepcopy` in the Standard Library,\n",
      " |      which recursively copies object data (see examples below).\n",
      " |      \n",
      " |      While ``Index`` objects are copied when ``deep=True``, the underlying\n",
      " |      numpy array is not copied for performance reasons. Since ``Index`` is\n",
      " |      immutable, the underlying data can be safely shared and a copy\n",
      " |      is not needed.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series([1, 2], index=[\"a\", \"b\"])\n",
      " |      >>> s\n",
      " |      a    1\n",
      " |      b    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s_copy = s.copy()\n",
      " |      >>> s_copy\n",
      " |      a    1\n",
      " |      b    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      **Shallow copy versus default (deep) copy:**\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2], index=[\"a\", \"b\"])\n",
      " |      >>> deep = s.copy()\n",
      " |      >>> shallow = s.copy(deep=False)\n",
      " |      \n",
      " |      Shallow copy shares data and index with original.\n",
      " |      \n",
      " |      >>> s is shallow\n",
      " |      False\n",
      " |      >>> s.values is shallow.values and s.index is shallow.index\n",
      " |      True\n",
      " |      \n",
      " |      Deep copy has own copy of data and index.\n",
      " |      \n",
      " |      >>> s is deep\n",
      " |      False\n",
      " |      >>> s.values is deep.values or s.index is deep.index\n",
      " |      False\n",
      " |      \n",
      " |      Updates to the data shared by shallow copy and original is reflected\n",
      " |      in both; deep copy remains unchanged.\n",
      " |      \n",
      " |      >>> s[0] = 3\n",
      " |      >>> shallow[1] = 4\n",
      " |      >>> s\n",
      " |      a    3\n",
      " |      b    4\n",
      " |      dtype: int64\n",
      " |      >>> shallow\n",
      " |      a    3\n",
      " |      b    4\n",
      " |      dtype: int64\n",
      " |      >>> deep\n",
      " |      a    1\n",
      " |      b    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Note that when copying an object containing Python objects, a deep copy\n",
      " |      will copy the data, but will not do so recursively. Updating a nested\n",
      " |      data object will be reflected in the deep copy.\n",
      " |      \n",
      " |      >>> s = pd.Series([[1, 2], [3, 4]])\n",
      " |      >>> deep = s.copy()\n",
      " |      >>> s[0][0] = 10\n",
      " |      >>> s\n",
      " |      0    [10, 2]\n",
      " |      1     [3, 4]\n",
      " |      dtype: object\n",
      " |      >>> deep\n",
      " |      0    [10, 2]\n",
      " |      1     [3, 4]\n",
      " |      dtype: object\n",
      " |  \n",
      " |  describe(self, percentiles=None, include=None, exclude=None)\n",
      " |      Generate descriptive statistics that summarize the central tendency,\n",
      " |      dispersion and shape of a dataset's distribution, excluding\n",
      " |      ``NaN`` values.\n",
      " |      \n",
      " |      Analyzes both numeric and object series, as well\n",
      " |      as ``DataFrame`` column sets of mixed data types. The output\n",
      " |      will vary depending on what is provided. Refer to the notes\n",
      " |      below for more detail.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      percentiles : list-like of numbers, optional\n",
      " |          The percentiles to include in the output. All should\n",
      " |          fall between 0 and 1. The default is\n",
      " |          ``[.25, .5, .75]``, which returns the 25th, 50th, and\n",
      " |          75th percentiles.\n",
      " |      include : 'all', list-like of dtypes or None (default), optional\n",
      " |          A white list of data types to include in the result. Ignored\n",
      " |          for ``Series``. Here are the options:\n",
      " |      \n",
      " |          - 'all' : All columns of the input will be included in the output.\n",
      " |          - A list-like of dtypes : Limits the results to the\n",
      " |            provided data types.\n",
      " |            To limit the result to numeric types submit\n",
      " |            ``numpy.number``. To limit it instead to object columns submit\n",
      " |            the ``numpy.object`` data type. Strings\n",
      " |            can also be used in the style of\n",
      " |            ``select_dtypes`` (e.g. ``df.describe(include=['O'])``). To\n",
      " |            select pandas categorical columns, use ``'category'``\n",
      " |          - None (default) : The result will include all numeric columns.\n",
      " |      exclude : list-like of dtypes or None (default), optional,\n",
      " |          A black list of data types to omit from the result. Ignored\n",
      " |          for ``Series``. Here are the options:\n",
      " |      \n",
      " |          - A list-like of dtypes : Excludes the provided data types\n",
      " |            from the result. To exclude numeric types submit\n",
      " |            ``numpy.number``. To exclude object columns submit the data\n",
      " |            type ``numpy.object``. Strings can also be used in the style of\n",
      " |            ``select_dtypes`` (e.g. ``df.describe(include=['O'])``). To\n",
      " |            exclude pandas categorical columns, use ``'category'``\n",
      " |          - None (default) : The result will exclude nothing.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Summary statistics of the Series or Dataframe provided.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.count: Count number of non-NA/null observations.\n",
      " |      DataFrame.max: Maximum of the values in the object.\n",
      " |      DataFrame.min: Minimum of the values in the object.\n",
      " |      DataFrame.mean: Mean of the values.\n",
      " |      DataFrame.std: Standard deviation of the obersvations.\n",
      " |      DataFrame.select_dtypes: Subset of a DataFrame including/excluding\n",
      " |          columns based on their dtype.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      For numeric data, the result's index will include ``count``,\n",
      " |      ``mean``, ``std``, ``min``, ``max`` as well as lower, ``50`` and\n",
      " |      upper percentiles. By default the lower percentile is ``25`` and the\n",
      " |      upper percentile is ``75``. The ``50`` percentile is the\n",
      " |      same as the median.\n",
      " |      \n",
      " |      For object data (e.g. strings or timestamps), the result's index\n",
      " |      will include ``count``, ``unique``, ``top``, and ``freq``. The ``top``\n",
      " |      is the most common value. The ``freq`` is the most common value's\n",
      " |      frequency. Timestamps also include the ``first`` and ``last`` items.\n",
      " |      \n",
      " |      If multiple object values have the highest count, then the\n",
      " |      ``count`` and ``top`` results will be arbitrarily chosen from\n",
      " |      among those with the highest count.\n",
      " |      \n",
      " |      For mixed data types provided via a ``DataFrame``, the default is to\n",
      " |      return only an analysis of numeric columns. If the dataframe consists\n",
      " |      only of object and categorical data without any numeric columns, the\n",
      " |      default is to return an analysis of both the object and categorical\n",
      " |      columns. If ``include='all'`` is provided as an option, the result\n",
      " |      will include a union of attributes of each type.\n",
      " |      \n",
      " |      The `include` and `exclude` parameters can be used to limit\n",
      " |      which columns in a ``DataFrame`` are analyzed for the output.\n",
      " |      The parameters are ignored when analyzing a ``Series``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Describing a numeric ``Series``.\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s.describe()\n",
      " |      count    3.0\n",
      " |      mean     2.0\n",
      " |      std      1.0\n",
      " |      min      1.0\n",
      " |      25%      1.5\n",
      " |      50%      2.0\n",
      " |      75%      2.5\n",
      " |      max      3.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Describing a categorical ``Series``.\n",
      " |      \n",
      " |      >>> s = pd.Series(['a', 'a', 'b', 'c'])\n",
      " |      >>> s.describe()\n",
      " |      count     4\n",
      " |      unique    3\n",
      " |      top       a\n",
      " |      freq      2\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Describing a timestamp ``Series``.\n",
      " |      \n",
      " |      >>> s = pd.Series([\n",
      " |      ...   np.datetime64(\"2000-01-01\"),\n",
      " |      ...   np.datetime64(\"2010-01-01\"),\n",
      " |      ...   np.datetime64(\"2010-01-01\")\n",
      " |      ... ])\n",
      " |      >>> s.describe()\n",
      " |      count                       3\n",
      " |      unique                      2\n",
      " |      top       2010-01-01 00:00:00\n",
      " |      freq                        2\n",
      " |      first     2000-01-01 00:00:00\n",
      " |      last      2010-01-01 00:00:00\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Describing a ``DataFrame``. By default only numeric fields\n",
      " |      are returned.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'categorical': pd.Categorical(['d','e','f']),\n",
      " |      ...                    'numeric': [1, 2, 3],\n",
      " |      ...                    'object': ['a', 'b', 'c']\n",
      " |      ...                   })\n",
      " |      >>> df.describe()\n",
      " |             numeric\n",
      " |      count      3.0\n",
      " |      mean       2.0\n",
      " |      std        1.0\n",
      " |      min        1.0\n",
      " |      25%        1.5\n",
      " |      50%        2.0\n",
      " |      75%        2.5\n",
      " |      max        3.0\n",
      " |      \n",
      " |      Describing all columns of a ``DataFrame`` regardless of data type.\n",
      " |      \n",
      " |      >>> df.describe(include='all')\n",
      " |              categorical  numeric object\n",
      " |      count            3      3.0      3\n",
      " |      unique           3      NaN      3\n",
      " |      top              f      NaN      c\n",
      " |      freq             1      NaN      1\n",
      " |      mean           NaN      2.0    NaN\n",
      " |      std            NaN      1.0    NaN\n",
      " |      min            NaN      1.0    NaN\n",
      " |      25%            NaN      1.5    NaN\n",
      " |      50%            NaN      2.0    NaN\n",
      " |      75%            NaN      2.5    NaN\n",
      " |      max            NaN      3.0    NaN\n",
      " |      \n",
      " |      Describing a column from a ``DataFrame`` by accessing it as\n",
      " |      an attribute.\n",
      " |      \n",
      " |      >>> df.numeric.describe()\n",
      " |      count    3.0\n",
      " |      mean     2.0\n",
      " |      std      1.0\n",
      " |      min      1.0\n",
      " |      25%      1.5\n",
      " |      50%      2.0\n",
      " |      75%      2.5\n",
      " |      max      3.0\n",
      " |      Name: numeric, dtype: float64\n",
      " |      \n",
      " |      Including only numeric columns in a ``DataFrame`` description.\n",
      " |      \n",
      " |      >>> df.describe(include=[np.number])\n",
      " |             numeric\n",
      " |      count      3.0\n",
      " |      mean       2.0\n",
      " |      std        1.0\n",
      " |      min        1.0\n",
      " |      25%        1.5\n",
      " |      50%        2.0\n",
      " |      75%        2.5\n",
      " |      max        3.0\n",
      " |      \n",
      " |      Including only string columns in a ``DataFrame`` description.\n",
      " |      \n",
      " |      >>> df.describe(include=[np.object])\n",
      " |             object\n",
      " |      count       3\n",
      " |      unique      3\n",
      " |      top         c\n",
      " |      freq        1\n",
      " |      \n",
      " |      Including only categorical columns from a ``DataFrame`` description.\n",
      " |      \n",
      " |      >>> df.describe(include=['category'])\n",
      " |             categorical\n",
      " |      count            3\n",
      " |      unique           3\n",
      " |      top              f\n",
      " |      freq             1\n",
      " |      \n",
      " |      Excluding numeric columns from a ``DataFrame`` description.\n",
      " |      \n",
      " |      >>> df.describe(exclude=[np.number])\n",
      " |             categorical object\n",
      " |      count            3      3\n",
      " |      unique           3      3\n",
      " |      top              f      c\n",
      " |      freq             1      1\n",
      " |      \n",
      " |      Excluding object columns from a ``DataFrame`` description.\n",
      " |      \n",
      " |      >>> df.describe(exclude=[np.object])\n",
      " |             categorical  numeric\n",
      " |      count            3      3.0\n",
      " |      unique           3      NaN\n",
      " |      top              f      NaN\n",
      " |      freq             1      NaN\n",
      " |      mean           NaN      2.0\n",
      " |      std            NaN      1.0\n",
      " |      min            NaN      1.0\n",
      " |      25%            NaN      1.5\n",
      " |      50%            NaN      2.0\n",
      " |      75%            NaN      2.5\n",
      " |      max            NaN      3.0\n",
      " |  \n",
      " |  droplevel(self, level, axis=0)\n",
      " |      Return DataFrame with requested index / column level(s) removed.\n",
      " |      \n",
      " |      .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      level : int, str, or list-like\n",
      " |          If a string is given, must be the name of a level\n",
      " |          If list-like, elements must be names or positional indexes\n",
      " |          of levels.\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      DataFrame.droplevel()\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([\n",
      " |      ...     [1, 2, 3, 4],\n",
      " |      ...     [5, 6, 7, 8],\n",
      " |      ...     [9, 10, 11, 12]\n",
      " |      ... ]).set_index([0, 1]).rename_axis(['a', 'b'])\n",
      " |      \n",
      " |      >>> df.columns = pd.MultiIndex.from_tuples([\n",
      " |      ...    ('c', 'e'), ('d', 'f')\n",
      " |      ... ], names=['level_1', 'level_2'])\n",
      " |      \n",
      " |      >>> df\n",
      " |      level_1   c   d\n",
      " |      level_2   e   f\n",
      " |      a b\n",
      " |      1 2      3   4\n",
      " |      5 6      7   8\n",
      " |      9 10    11  12\n",
      " |      \n",
      " |      >>> df.droplevel('a')\n",
      " |      level_1   c   d\n",
      " |      level_2   e   f\n",
      " |      b\n",
      " |      2        3   4\n",
      " |      6        7   8\n",
      " |      10      11  12\n",
      " |      \n",
      " |      >>> df.droplevel('level2', axis=1)\n",
      " |      level_1   c   d\n",
      " |      a b\n",
      " |      1 2      3   4\n",
      " |      5 6      7   8\n",
      " |      9 10    11  12\n",
      " |  \n",
      " |  equals(self, other)\n",
      " |      Test whether two objects contain the same elements.\n",
      " |      \n",
      " |      This function allows two Series or DataFrames to be compared against\n",
      " |      each other to see if they have the same shape and elements. NaNs in\n",
      " |      the same location are considered equal. The column headers do not\n",
      " |      need to have the same type, but the elements within the columns must\n",
      " |      be the same dtype.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Series or DataFrame\n",
      " |          The other Series or DataFrame to be compared with the first.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      bool\n",
      " |          True if all elements are the same in both objects, False\n",
      " |          otherwise.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.eq : Compare two Series objects of the same length\n",
      " |          and return a Series where each element is True if the element\n",
      " |          in each Series is equal, False otherwise.\n",
      " |      DataFrame.eq : Compare two DataFrame objects of the same shape and\n",
      " |          return a DataFrame where each element is True if the respective\n",
      " |          element in each DataFrame is equal, False otherwise.\n",
      " |      assert_series_equal : Return True if left and right Series are equal,\n",
      " |          False otherwise.\n",
      " |      assert_frame_equal : Return True if left and right DataFrames are\n",
      " |          equal, False otherwise.\n",
      " |      numpy.array_equal : Return True if two arrays have the same shape\n",
      " |          and elements, False otherwise.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      This function requires that the elements have the same dtype as their\n",
      " |      respective elements in the other Series or DataFrame. However, the\n",
      " |      column labels do not need to have the same type, as long as they are\n",
      " |      still considered equal.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({1: [10], 2: [20]})\n",
      " |      >>> df\n",
      " |          1   2\n",
      " |      0  10  20\n",
      " |      \n",
      " |      DataFrames df and exactly_equal have the same types and values for\n",
      " |      their elements and column labels, which will return True.\n",
      " |      \n",
      " |      >>> exactly_equal = pd.DataFrame({1: [10], 2: [20]})\n",
      " |      >>> exactly_equal\n",
      " |          1   2\n",
      " |      0  10  20\n",
      " |      >>> df.equals(exactly_equal)\n",
      " |      True\n",
      " |      \n",
      " |      DataFrames df and different_column_type have the same element\n",
      " |      types and values, but have different types for the column labels,\n",
      " |      which will still return True.\n",
      " |      \n",
      " |      >>> different_column_type = pd.DataFrame({1.0: [10], 2.0: [20]})\n",
      " |      >>> different_column_type\n",
      " |         1.0  2.0\n",
      " |      0   10   20\n",
      " |      >>> df.equals(different_column_type)\n",
      " |      True\n",
      " |      \n",
      " |      DataFrames df and different_data_type have different types for the\n",
      " |      same values for their elements, and will return False even though\n",
      " |      their column labels are the same values and types.\n",
      " |      \n",
      " |      >>> different_data_type = pd.DataFrame({1: [10.0], 2: [20.0]})\n",
      " |      >>> different_data_type\n",
      " |            1     2\n",
      " |      0  10.0  20.0\n",
      " |      >>> df.equals(different_data_type)\n",
      " |      False\n",
      " |  \n",
      " |  ffill(self, axis=None, inplace=False, limit=None, downcast=None)\n",
      " |      Synonym for :meth:`DataFrame.fillna` with ``method='ffill'``.\n",
      " |  \n",
      " |  filter(self, items=None, like=None, regex=None, axis=None)\n",
      " |      Subset rows or columns of dataframe according to labels in\n",
      " |      the specified index.\n",
      " |      \n",
      " |      Note that this routine does not filter a dataframe on its\n",
      " |      contents. The filter is applied to the labels of the index.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      items : list-like\n",
      " |          List of axis to restrict to (must not all be present).\n",
      " |      like : string\n",
      " |          Keep axis where \"arg in col == True\".\n",
      " |      regex : string (regular expression)\n",
      " |          Keep axis with re.search(regex, col) == True.\n",
      " |      axis : int or string axis name\n",
      " |          The axis to filter on.  By default this is the info axis,\n",
      " |          'index' for Series, 'columns' for DataFrame.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      same type as input object\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.loc\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The ``items``, ``like``, and ``regex`` parameters are\n",
      " |      enforced to be mutually exclusive.\n",
      " |      \n",
      " |      ``axis`` defaults to the info axis that is used when indexing\n",
      " |      with ``[]``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame(np.array(([1,2,3], [4,5,6])),\n",
      " |      ...                   index=['mouse', 'rabbit'],\n",
      " |      ...                   columns=['one', 'two', 'three'])\n",
      " |      \n",
      " |      >>> # select columns by name\n",
      " |      >>> df.filter(items=['one', 'three'])\n",
      " |               one  three\n",
      " |      mouse     1      3\n",
      " |      rabbit    4      6\n",
      " |      \n",
      " |      >>> # select columns by regular expression\n",
      " |      >>> df.filter(regex='e$', axis=1)\n",
      " |               one  three\n",
      " |      mouse     1      3\n",
      " |      rabbit    4      6\n",
      " |      \n",
      " |      >>> # select rows containing 'bbi'\n",
      " |      >>> df.filter(like='bbi', axis=0)\n",
      " |               one  two  three\n",
      " |      rabbit    4    5      6\n",
      " |  \n",
      " |  first(self, offset)\n",
      " |      Convenience method for subsetting initial periods of time series data\n",
      " |      based on a date offset.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      offset : string, DateOffset, dateutil.relativedelta\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      subset : same type as caller\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the index is not  a :class:`DatetimeIndex`\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      last : Select final periods of time series based on a date offset.\n",
      " |      at_time : Select values at a particular time of the day.\n",
      " |      between_time : Select values between particular times of the day.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> i = pd.date_range('2018-04-09', periods=4, freq='2D')\n",
      " |      >>> ts = pd.DataFrame({'A': [1,2,3,4]}, index=i)\n",
      " |      >>> ts\n",
      " |                  A\n",
      " |      2018-04-09  1\n",
      " |      2018-04-11  2\n",
      " |      2018-04-13  3\n",
      " |      2018-04-15  4\n",
      " |      \n",
      " |      Get the rows for the first 3 days:\n",
      " |      \n",
      " |      >>> ts.first('3D')\n",
      " |                  A\n",
      " |      2018-04-09  1\n",
      " |      2018-04-11  2\n",
      " |      \n",
      " |      Notice the data for 3 first calender days were returned, not the first\n",
      " |      3 days observed in the dataset, and therefore data for 2018-04-13 was\n",
      " |      not returned.\n",
      " |  \n",
      " |  first_valid_index(self)\n",
      " |      Return index for first non-NA/null value.\n",
      " |      \n",
      " |      Returns\n",
      " |      --------\n",
      " |      scalar : type of index\n",
      " |      \n",
      " |      Notes\n",
      " |      --------\n",
      " |      If all elements are non-NA/null, returns None.\n",
      " |      Also returns None for empty NDFrame.\n",
      " |  \n",
      " |  get(self, key, default=None)\n",
      " |      Get item from object for given key (DataFrame column, Panel slice,\n",
      " |      etc.). Returns default value if not found.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      key : object\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      value : same type as items contained in object\n",
      " |  \n",
      " |  get_dtype_counts(self)\n",
      " |      Return counts of unique dtypes in this object.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      dtype : Series\n",
      " |          Series with the count of columns with each dtype.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      dtypes : Return the dtypes in this object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = [['a', 1, 1.0], ['b', 2, 2.0], ['c', 3, 3.0]]\n",
      " |      >>> df = pd.DataFrame(a, columns=['str', 'int', 'float'])\n",
      " |      >>> df\n",
      " |        str  int  float\n",
      " |      0   a    1    1.0\n",
      " |      1   b    2    2.0\n",
      " |      2   c    3    3.0\n",
      " |      \n",
      " |      >>> df.get_dtype_counts()\n",
      " |      float64    1\n",
      " |      int64      1\n",
      " |      object     1\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  get_ftype_counts(self)\n",
      " |      Return counts of unique ftypes in this object.\n",
      " |      \n",
      " |      .. deprecated:: 0.23.0\n",
      " |      \n",
      " |      This is useful for SparseDataFrame or for DataFrames containing\n",
      " |      sparse arrays.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      dtype : Series\n",
      " |          Series with the count of columns with each type and\n",
      " |          sparsity (dense/sparse)\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      ftypes : Return ftypes (indication of sparse/dense and dtype) in\n",
      " |          this object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> a = [['a', 1, 1.0], ['b', 2, 2.0], ['c', 3, 3.0]]\n",
      " |      >>> df = pd.DataFrame(a, columns=['str', 'int', 'float'])\n",
      " |      >>> df\n",
      " |        str  int  float\n",
      " |      0   a    1    1.0\n",
      " |      1   b    2    2.0\n",
      " |      2   c    3    3.0\n",
      " |      \n",
      " |      >>> df.get_ftype_counts()  # doctest: +SKIP\n",
      " |      float64:dense    1\n",
      " |      int64:dense      1\n",
      " |      object:dense     1\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  groupby(self, by=None, axis=0, level=None, as_index=True, sort=True, group_keys=True, squeeze=False, observed=False, **kwargs)\n",
      " |      Group DataFrame or Series using a mapper or by a Series of columns.\n",
      " |      \n",
      " |      A groupby operation involves some combination of splitting the\n",
      " |      object, applying a function, and combining the results. This can be\n",
      " |      used to group large amounts of data and compute operations on these\n",
      " |      groups.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      by : mapping, function, label, or list of labels\n",
      " |          Used to determine the groups for the groupby.\n",
      " |          If ``by`` is a function, it's called on each value of the object's\n",
      " |          index. If a dict or Series is passed, the Series or dict VALUES\n",
      " |          will be used to determine the groups (the Series' values are first\n",
      " |          aligned; see ``.align()`` method). If an ndarray is passed, the\n",
      " |          values are used as-is determine the groups. A label or list of\n",
      " |          labels may be passed to group by the columns in ``self``. Notice\n",
      " |          that a tuple is interpreted a (single) key.\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          Split along rows (0) or columns (1).\n",
      " |      level : int, level name, or sequence of such, default None\n",
      " |          If the axis is a MultiIndex (hierarchical), group by a particular\n",
      " |          level or levels.\n",
      " |      as_index : bool, default True\n",
      " |          For aggregated output, return object with group labels as the\n",
      " |          index. Only relevant for DataFrame input. as_index=False is\n",
      " |          effectively \"SQL-style\" grouped output.\n",
      " |      sort : bool, default True\n",
      " |          Sort group keys. Get better performance by turning this off.\n",
      " |          Note this does not influence the order of observations within each\n",
      " |          group. Groupby preserves the order of rows within each group.\n",
      " |      group_keys : bool, default True\n",
      " |          When calling apply, add group keys to index to identify pieces.\n",
      " |      squeeze : bool, default False\n",
      " |          Reduce the dimensionality of the return type if possible,\n",
      " |          otherwise return a consistent type.\n",
      " |      observed : bool, default False\n",
      " |          This only applies if any of the groupers are Categoricals.\n",
      " |          If True: only show observed values for categorical groupers.\n",
      " |          If False: show all values for categorical groupers.\n",
      " |      \n",
      " |          .. versionadded:: 0.23.0\n",
      " |      \n",
      " |      **kwargs\n",
      " |          Optional, only accepts keyword argument 'mutated' and is passed\n",
      " |          to groupby.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      DataFrameGroupBy or SeriesGroupBy\n",
      " |          Depends on the calling object and returns groupby object that\n",
      " |          contains information about the groups.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      resample : Convenience method for frequency conversion and resampling\n",
      " |          of time series.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      See the `user guide\n",
      " |      <http://pandas.pydata.org/pandas-docs/stable/groupby.html>`_ for more.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'Animal' : ['Falcon', 'Falcon',\n",
      " |      ...                                'Parrot', 'Parrot'],\n",
      " |      ...                    'Max Speed' : [380., 370., 24., 26.]})\n",
      " |      >>> df\n",
      " |         Animal  Max Speed\n",
      " |      0  Falcon      380.0\n",
      " |      1  Falcon      370.0\n",
      " |      2  Parrot       24.0\n",
      " |      3  Parrot       26.0\n",
      " |      >>> df.groupby(['Animal']).mean()\n",
      " |              Max Speed\n",
      " |      Animal\n",
      " |      Falcon      375.0\n",
      " |      Parrot       25.0\n",
      " |      \n",
      " |      **Hierarchical Indexes**\n",
      " |      \n",
      " |      We can groupby different levels of a hierarchical index\n",
      " |      using the `level` parameter:\n",
      " |      \n",
      " |      >>> arrays = [['Falcon', 'Falcon', 'Parrot', 'Parrot'],\n",
      " |      ...           ['Capitve', 'Wild', 'Capitve', 'Wild']]\n",
      " |      >>> index = pd.MultiIndex.from_arrays(arrays, names=('Animal', 'Type'))\n",
      " |      >>> df = pd.DataFrame({'Max Speed' : [390., 350., 30., 20.]},\n",
      " |      ...                    index=index)\n",
      " |      >>> df\n",
      " |                      Max Speed\n",
      " |      Animal Type\n",
      " |      Falcon Capitve      390.0\n",
      " |             Wild         350.0\n",
      " |      Parrot Capitve       30.0\n",
      " |             Wild          20.0\n",
      " |      >>> df.groupby(level=0).mean()\n",
      " |              Max Speed\n",
      " |      Animal\n",
      " |      Falcon      370.0\n",
      " |      Parrot       25.0\n",
      " |      >>> df.groupby(level=1).mean()\n",
      " |               Max Speed\n",
      " |      Type\n",
      " |      Capitve      210.0\n",
      " |      Wild         185.0\n",
      " |  \n",
      " |  head(self, n=5)\n",
      " |      Return the first `n` rows.\n",
      " |      \n",
      " |      This function returns the first `n` rows for the object based\n",
      " |      on position. It is useful for quickly testing if your object\n",
      " |      has the right type of data in it.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      n : int, default 5\n",
      " |          Number of rows to select.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      obj_head : same type as caller\n",
      " |          The first `n` rows of the caller object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.tail: Returns the last `n` rows.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'animal':['alligator', 'bee', 'falcon', 'lion',\n",
      " |      ...                    'monkey', 'parrot', 'shark', 'whale', 'zebra']})\n",
      " |      >>> df\n",
      " |            animal\n",
      " |      0  alligator\n",
      " |      1        bee\n",
      " |      2     falcon\n",
      " |      3       lion\n",
      " |      4     monkey\n",
      " |      5     parrot\n",
      " |      6      shark\n",
      " |      7      whale\n",
      " |      8      zebra\n",
      " |      \n",
      " |      Viewing the first 5 lines\n",
      " |      \n",
      " |      >>> df.head()\n",
      " |            animal\n",
      " |      0  alligator\n",
      " |      1        bee\n",
      " |      2     falcon\n",
      " |      3       lion\n",
      " |      4     monkey\n",
      " |      \n",
      " |      Viewing the first `n` lines (three in this case)\n",
      " |      \n",
      " |      >>> df.head(3)\n",
      " |            animal\n",
      " |      0  alligator\n",
      " |      1        bee\n",
      " |      2     falcon\n",
      " |  \n",
      " |  infer_objects(self)\n",
      " |      Attempt to infer better dtypes for object columns.\n",
      " |      \n",
      " |      Attempts soft conversion of object-dtyped\n",
      " |      columns, leaving non-object and unconvertible\n",
      " |      columns unchanged. The inference rules are the\n",
      " |      same as during normal Series/DataFrame construction.\n",
      " |      \n",
      " |      .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      converted : same type as input object\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      to_datetime : Convert argument to datetime.\n",
      " |      to_timedelta : Convert argument to timedelta.\n",
      " |      to_numeric : Convert argument to numeric type.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({\"A\": [\"a\", 1, 2, 3]})\n",
      " |      >>> df = df.iloc[1:]\n",
      " |      >>> df\n",
      " |         A\n",
      " |      1  1\n",
      " |      2  2\n",
      " |      3  3\n",
      " |      \n",
      " |      >>> df.dtypes\n",
      " |      A    object\n",
      " |      dtype: object\n",
      " |      \n",
      " |      >>> df.infer_objects().dtypes\n",
      " |      A    int64\n",
      " |      dtype: object\n",
      " |  \n",
      " |  interpolate(self, method='linear', axis=0, limit=None, inplace=False, limit_direction='forward', limit_area=None, downcast=None, **kwargs)\n",
      " |      Interpolate values according to different methods.\n",
      " |      \n",
      " |      Please note that only ``method='linear'`` is supported for\n",
      " |      DataFrame/Series with a MultiIndex.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      method : str, default 'linear'\n",
      " |          Interpolation technique to use. One of:\n",
      " |      \n",
      " |          * 'linear': Ignore the index and treat the values as equally\n",
      " |            spaced. This is the only method supported on MultiIndexes.\n",
      " |          * 'time': Works on daily and higher resolution data to interpolate\n",
      " |            given length of interval.\n",
      " |          * 'index', 'values': use the actual numerical values of the index.\n",
      " |          * 'pad': Fill in NaNs using existing values.\n",
      " |          * 'nearest', 'zero', 'slinear', 'quadratic', 'cubic', 'spline',\n",
      " |            'barycentric', 'polynomial': Passed to\n",
      " |            `scipy.interpolate.interp1d`. Both 'polynomial' and 'spline'\n",
      " |            require that you also specify an `order` (int),\n",
      " |            e.g. ``df.interpolate(method='polynomial', order=4)``.\n",
      " |            These use the numerical values of the index.\n",
      " |          * 'krogh', 'piecewise_polynomial', 'spline', 'pchip', 'akima':\n",
      " |            Wrappers around the SciPy interpolation methods of similar\n",
      " |            names. See `Notes`.\n",
      " |          * 'from_derivatives': Refers to\n",
      " |            `scipy.interpolate.BPoly.from_derivatives` which\n",
      " |            replaces 'piecewise_polynomial' interpolation method in\n",
      " |            scipy 0.18.\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |      \n",
      " |             Added support for the 'akima' method.\n",
      " |             Added interpolate method 'from_derivatives' which replaces\n",
      " |             'piecewise_polynomial' in SciPy 0.18; backwards-compatible with\n",
      " |             SciPy < 0.18\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default None\n",
      " |          Axis to interpolate along.\n",
      " |      limit : int, optional\n",
      " |          Maximum number of consecutive NaNs to fill. Must be greater than\n",
      " |          0.\n",
      " |      inplace : bool, default False\n",
      " |          Update the data in place if possible.\n",
      " |      limit_direction : {'forward', 'backward', 'both'}, default 'forward'\n",
      " |          If limit is specified, consecutive NaNs will be filled in this\n",
      " |          direction.\n",
      " |      limit_area : {`None`, 'inside', 'outside'}, default None\n",
      " |          If limit is specified, consecutive NaNs will be filled with this\n",
      " |          restriction.\n",
      " |      \n",
      " |          * ``None``: No fill restriction.\n",
      " |          * 'inside': Only fill NaNs surrounded by valid values\n",
      " |            (interpolate).\n",
      " |          * 'outside': Only fill NaNs outside valid values (extrapolate).\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      downcast : optional, 'infer' or None, defaults to None\n",
      " |          Downcast dtypes if possible.\n",
      " |      **kwargs\n",
      " |          Keyword arguments to pass on to the interpolating function.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Returns the same object type as the caller, interpolated at\n",
      " |          some or all ``NaN`` values\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      fillna : Fill missing values using different methods.\n",
      " |      scipy.interpolate.Akima1DInterpolator : Piecewise cubic polynomials\n",
      " |          (Akima interpolator).\n",
      " |      scipy.interpolate.BPoly.from_derivatives : Piecewise polynomial in the\n",
      " |          Bernstein basis.\n",
      " |      scipy.interpolate.interp1d : Interpolate a 1-D function.\n",
      " |      scipy.interpolate.KroghInterpolator : Interpolate polynomial (Krogh\n",
      " |          interpolator).\n",
      " |      scipy.interpolate.PchipInterpolator : PCHIP 1-d monotonic cubic\n",
      " |          interpolation.\n",
      " |      scipy.interpolate.CubicSpline : Cubic spline data interpolator.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The 'krogh', 'piecewise_polynomial', 'spline', 'pchip' and 'akima'\n",
      " |      methods are wrappers around the respective SciPy implementations of\n",
      " |      similar names. These use the actual numerical values of the index.\n",
      " |      For more information on their behavior, see the\n",
      " |      `SciPy documentation\n",
      " |      <http://docs.scipy.org/doc/scipy/reference/interpolate.html#univariate-interpolation>`__\n",
      " |      and `SciPy tutorial\n",
      " |      <http://docs.scipy.org/doc/scipy/reference/tutorial/interpolate.html>`__.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Filling in ``NaN`` in a :class:`~pandas.Series` via linear\n",
      " |      interpolation.\n",
      " |      \n",
      " |      >>> s = pd.Series([0, 1, np.nan, 3])\n",
      " |      >>> s\n",
      " |      0    0.0\n",
      " |      1    1.0\n",
      " |      2    NaN\n",
      " |      3    3.0\n",
      " |      dtype: float64\n",
      " |      >>> s.interpolate()\n",
      " |      0    0.0\n",
      " |      1    1.0\n",
      " |      2    2.0\n",
      " |      3    3.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Filling in ``NaN`` in a Series by padding, but filling at most two\n",
      " |      consecutive ``NaN`` at a time.\n",
      " |      \n",
      " |      >>> s = pd.Series([np.nan, \"single_one\", np.nan,\n",
      " |      ...                \"fill_two_more\", np.nan, np.nan, np.nan,\n",
      " |      ...                4.71, np.nan])\n",
      " |      >>> s\n",
      " |      0              NaN\n",
      " |      1       single_one\n",
      " |      2              NaN\n",
      " |      3    fill_two_more\n",
      " |      4              NaN\n",
      " |      5              NaN\n",
      " |      6              NaN\n",
      " |      7             4.71\n",
      " |      8              NaN\n",
      " |      dtype: object\n",
      " |      >>> s.interpolate(method='pad', limit=2)\n",
      " |      0              NaN\n",
      " |      1       single_one\n",
      " |      2       single_one\n",
      " |      3    fill_two_more\n",
      " |      4    fill_two_more\n",
      " |      5    fill_two_more\n",
      " |      6              NaN\n",
      " |      7             4.71\n",
      " |      8             4.71\n",
      " |      dtype: object\n",
      " |      \n",
      " |      Filling in ``NaN`` in a Series via polynomial interpolation or splines:\n",
      " |      Both 'polynomial' and 'spline' methods require that you also specify\n",
      " |      an ``order`` (int).\n",
      " |      \n",
      " |      >>> s = pd.Series([0, 2, np.nan, 8])\n",
      " |      >>> s.interpolate(method='polynomial', order=2)\n",
      " |      0    0.000000\n",
      " |      1    2.000000\n",
      " |      2    4.666667\n",
      " |      3    8.000000\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      Fill the DataFrame forward (that is, going down) along each column\n",
      " |      using linear interpolation.\n",
      " |      \n",
      " |      Note how the last entry in column 'a' is interpolated differently,\n",
      " |      because there is no entry after it to use for interpolation.\n",
      " |      Note how the first entry in column 'b' remains ``NaN``, because there\n",
      " |      is no entry befofe it to use for interpolation.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([(0.0,  np.nan, -1.0, 1.0),\n",
      " |      ...                    (np.nan, 2.0, np.nan, np.nan),\n",
      " |      ...                    (2.0, 3.0, np.nan, 9.0),\n",
      " |      ...                    (np.nan, 4.0, -4.0, 16.0)],\n",
      " |      ...                   columns=list('abcd'))\n",
      " |      >>> df\n",
      " |           a    b    c     d\n",
      " |      0  0.0  NaN -1.0   1.0\n",
      " |      1  NaN  2.0  NaN   NaN\n",
      " |      2  2.0  3.0  NaN   9.0\n",
      " |      3  NaN  4.0 -4.0  16.0\n",
      " |      >>> df.interpolate(method='linear', limit_direction='forward', axis=0)\n",
      " |           a    b    c     d\n",
      " |      0  0.0  NaN -1.0   1.0\n",
      " |      1  1.0  2.0 -2.0   5.0\n",
      " |      2  2.0  3.0 -3.0   9.0\n",
      " |      3  2.0  4.0 -4.0  16.0\n",
      " |      \n",
      " |      Using polynomial interpolation.\n",
      " |      \n",
      " |      >>> df['d'].interpolate(method='polynomial', order=2)\n",
      " |      0     1.0\n",
      " |      1     4.0\n",
      " |      2     9.0\n",
      " |      3    16.0\n",
      " |      Name: d, dtype: float64\n",
      " |  \n",
      " |  last(self, offset)\n",
      " |      Convenience method for subsetting final periods of time series data\n",
      " |      based on a date offset.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      offset : string, DateOffset, dateutil.relativedelta\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      subset : same type as caller\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the index is not  a :class:`DatetimeIndex`\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      first : Select initial periods of time series based on a date offset.\n",
      " |      at_time : Select values at a particular time of the day.\n",
      " |      between_time : Select values between particular times of the day.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> i = pd.date_range('2018-04-09', periods=4, freq='2D')\n",
      " |      >>> ts = pd.DataFrame({'A': [1,2,3,4]}, index=i)\n",
      " |      >>> ts\n",
      " |                  A\n",
      " |      2018-04-09  1\n",
      " |      2018-04-11  2\n",
      " |      2018-04-13  3\n",
      " |      2018-04-15  4\n",
      " |      \n",
      " |      Get the rows for the last 3 days:\n",
      " |      \n",
      " |      >>> ts.last('3D')\n",
      " |                  A\n",
      " |      2018-04-13  3\n",
      " |      2018-04-15  4\n",
      " |      \n",
      " |      Notice the data for 3 last calender days were returned, not the last\n",
      " |      3 observed days in the dataset, and therefore data for 2018-04-11 was\n",
      " |      not returned.\n",
      " |  \n",
      " |  last_valid_index(self)\n",
      " |      Return index for last non-NA/null value.\n",
      " |      \n",
      " |      Returns\n",
      " |      --------\n",
      " |      scalar : type of index\n",
      " |      \n",
      " |      Notes\n",
      " |      --------\n",
      " |      If all elements are non-NA/null, returns None.\n",
      " |      Also returns None for empty NDFrame.\n",
      " |  \n",
      " |  mask(self, cond, other=nan, inplace=False, axis=None, level=None, errors='raise', try_cast=False, raise_on_error=None)\n",
      " |      Replace values where the condition is True.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      cond : boolean NDFrame, array-like, or callable\n",
      " |          Where `cond` is False, keep the original value. Where\n",
      " |          True, replace with corresponding value from `other`.\n",
      " |          If `cond` is callable, it is computed on the NDFrame and\n",
      " |          should return boolean NDFrame or array. The callable must\n",
      " |          not change input NDFrame (though pandas doesn't check it).\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |              A callable can be used as cond.\n",
      " |      \n",
      " |      other : scalar, NDFrame, or callable\n",
      " |          Entries where `cond` is True are replaced with\n",
      " |          corresponding value from `other`.\n",
      " |          If other is callable, it is computed on the NDFrame and\n",
      " |          should return scalar or NDFrame. The callable must not\n",
      " |          change input NDFrame (though pandas doesn't check it).\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |              A callable can be used as other.\n",
      " |      \n",
      " |      inplace : boolean, default False\n",
      " |          Whether to perform the operation in place on the data.\n",
      " |      axis : int, default None\n",
      " |          Alignment axis if needed.\n",
      " |      level : int, default None\n",
      " |          Alignment level if needed.\n",
      " |      errors : str, {'raise', 'ignore'}, default `raise`\n",
      " |          Note that currently this parameter won't affect\n",
      " |          the results and will always coerce to a suitable dtype.\n",
      " |      \n",
      " |          - `raise` : allow exceptions to be raised.\n",
      " |          - `ignore` : suppress exceptions. On error return original object.\n",
      " |      \n",
      " |      try_cast : boolean, default False\n",
      " |          Try to cast the result back to the input type (if possible).\n",
      " |      raise_on_error : boolean, default True\n",
      " |          Whether to raise on invalid data types (e.g. trying to where on\n",
      " |          strings).\n",
      " |      \n",
      " |          .. deprecated:: 0.21.0\n",
      " |      \n",
      " |             Use `errors`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      wh : same type as caller\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      :func:`DataFrame.where` : Return an object of same shape as\n",
      " |          self.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The mask method is an application of the if-then idiom. For each\n",
      " |      element in the calling DataFrame, if ``cond`` is ``False`` the\n",
      " |      element is used; otherwise the corresponding element from the DataFrame\n",
      " |      ``other`` is used.\n",
      " |      \n",
      " |      The signature for :func:`DataFrame.where` differs from\n",
      " |      :func:`numpy.where`. Roughly ``df1.where(m, df2)`` is equivalent to\n",
      " |      ``np.where(m, df1, df2)``.\n",
      " |      \n",
      " |      For further details and examples see the ``mask`` documentation in\n",
      " |      :ref:`indexing <indexing.where_mask>`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(range(5))\n",
      " |      >>> s.where(s > 0)\n",
      " |      0    NaN\n",
      " |      1    1.0\n",
      " |      2    2.0\n",
      " |      3    3.0\n",
      " |      4    4.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.mask(s > 0)\n",
      " |      0    0.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.where(s > 1, 10)\n",
      " |      0    10\n",
      " |      1    10\n",
      " |      2    2\n",
      " |      3    3\n",
      " |      4    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df = pd.DataFrame(np.arange(10).reshape(-1, 2), columns=['A', 'B'])\n",
      " |      >>> m = df % 3 == 0\n",
      " |      >>> df.where(m, -df)\n",
      " |         A  B\n",
      " |      0  0 -1\n",
      " |      1 -2  3\n",
      " |      2 -4 -5\n",
      " |      3  6 -7\n",
      " |      4 -8  9\n",
      " |      >>> df.where(m, -df) == np.where(m, df, -df)\n",
      " |            A     B\n",
      " |      0  True  True\n",
      " |      1  True  True\n",
      " |      2  True  True\n",
      " |      3  True  True\n",
      " |      4  True  True\n",
      " |      >>> df.where(m, -df) == df.mask(~m, -df)\n",
      " |            A     B\n",
      " |      0  True  True\n",
      " |      1  True  True\n",
      " |      2  True  True\n",
      " |      3  True  True\n",
      " |      4  True  True\n",
      " |  \n",
      " |  pct_change(self, periods=1, fill_method='pad', limit=None, freq=None, **kwargs)\n",
      " |      Percentage change between the current and a prior element.\n",
      " |      \n",
      " |      Computes the percentage change from the immediately previous row by\n",
      " |      default. This is useful in comparing the percentage of change in a time\n",
      " |      series of elements.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      periods : int, default 1\n",
      " |          Periods to shift for forming percent change.\n",
      " |      fill_method : str, default 'pad'\n",
      " |          How to handle NAs before computing percent changes.\n",
      " |      limit : int, default None\n",
      " |          The number of consecutive NAs to fill before stopping.\n",
      " |      freq : DateOffset, timedelta, or offset alias string, optional\n",
      " |          Increment to use from time series API (e.g. 'M' or BDay()).\n",
      " |      **kwargs\n",
      " |          Additional keyword arguments are passed into\n",
      " |          `DataFrame.shift` or `Series.shift`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      chg : Series or DataFrame\n",
      " |          The same type as the calling object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.diff : Compute the difference of two elements in a Series.\n",
      " |      DataFrame.diff : Compute the difference of two elements in a DataFrame.\n",
      " |      Series.shift : Shift the index by some number of periods.\n",
      " |      DataFrame.shift : Shift the index by some number of periods.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([90, 91, 85])\n",
      " |      >>> s\n",
      " |      0    90\n",
      " |      1    91\n",
      " |      2    85\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.pct_change()\n",
      " |      0         NaN\n",
      " |      1    0.011111\n",
      " |      2   -0.065934\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.pct_change(periods=2)\n",
      " |      0         NaN\n",
      " |      1         NaN\n",
      " |      2   -0.055556\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      See the percentage change in a Series where filling NAs with last\n",
      " |      valid observation forward to next valid.\n",
      " |      \n",
      " |      >>> s = pd.Series([90, 91, None, 85])\n",
      " |      >>> s\n",
      " |      0    90.0\n",
      " |      1    91.0\n",
      " |      2     NaN\n",
      " |      3    85.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.pct_change(fill_method='ffill')\n",
      " |      0         NaN\n",
      " |      1    0.011111\n",
      " |      2    0.000000\n",
      " |      3   -0.065934\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      Percentage change in French franc, Deutsche Mark, and Italian lira from\n",
      " |      1980-01-01 to 1980-03-01.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\n",
      " |      ...     'FR': [4.0405, 4.0963, 4.3149],\n",
      " |      ...     'GR': [1.7246, 1.7482, 1.8519],\n",
      " |      ...     'IT': [804.74, 810.01, 860.13]},\n",
      " |      ...     index=['1980-01-01', '1980-02-01', '1980-03-01'])\n",
      " |      >>> df\n",
      " |                      FR      GR      IT\n",
      " |      1980-01-01  4.0405  1.7246  804.74\n",
      " |      1980-02-01  4.0963  1.7482  810.01\n",
      " |      1980-03-01  4.3149  1.8519  860.13\n",
      " |      \n",
      " |      >>> df.pct_change()\n",
      " |                        FR        GR        IT\n",
      " |      1980-01-01       NaN       NaN       NaN\n",
      " |      1980-02-01  0.013810  0.013684  0.006549\n",
      " |      1980-03-01  0.053365  0.059318  0.061876\n",
      " |      \n",
      " |      Percentage of change in GOOG and APPL stock volume. Shows computing\n",
      " |      the percentage change between columns.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\n",
      " |      ...     '2016': [1769950, 30586265],\n",
      " |      ...     '2015': [1500923, 40912316],\n",
      " |      ...     '2014': [1371819, 41403351]},\n",
      " |      ...     index=['GOOG', 'APPL'])\n",
      " |      >>> df\n",
      " |                2016      2015      2014\n",
      " |      GOOG   1769950   1500923   1371819\n",
      " |      APPL  30586265  40912316  41403351\n",
      " |      \n",
      " |      >>> df.pct_change(axis='columns')\n",
      " |            2016      2015      2014\n",
      " |      GOOG   NaN -0.151997 -0.086016\n",
      " |      APPL   NaN  0.337604  0.012002\n",
      " |  \n",
      " |  pipe(self, func, *args, **kwargs)\n",
      " |      Apply func(self, \\*args, \\*\\*kwargs).\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      func : function\n",
      " |          function to apply to the NDFrame.\n",
      " |          ``args``, and ``kwargs`` are passed into ``func``.\n",
      " |          Alternatively a ``(callable, data_keyword)`` tuple where\n",
      " |          ``data_keyword`` is a string indicating the keyword of\n",
      " |          ``callable`` that expects the NDFrame.\n",
      " |      args : iterable, optional\n",
      " |          positional arguments passed into ``func``.\n",
      " |      kwargs : mapping, optional\n",
      " |          a dictionary of keyword arguments passed into ``func``.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      object : the return type of ``func``.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.apply\n",
      " |      DataFrame.applymap\n",
      " |      Series.map\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      \n",
      " |      Use ``.pipe`` when chaining together functions that expect\n",
      " |      Series, DataFrames or GroupBy objects. Instead of writing\n",
      " |      \n",
      " |      >>> f(g(h(df), arg1=a), arg2=b, arg3=c)\n",
      " |      \n",
      " |      You can write\n",
      " |      \n",
      " |      >>> (df.pipe(h)\n",
      " |      ...    .pipe(g, arg1=a)\n",
      " |      ...    .pipe(f, arg2=b, arg3=c)\n",
      " |      ... )\n",
      " |      \n",
      " |      If you have a function that takes the data as (say) the second\n",
      " |      argument, pass a tuple indicating which keyword expects the\n",
      " |      data. For example, suppose ``f`` takes its data as ``arg2``:\n",
      " |      \n",
      " |      >>> (df.pipe(h)\n",
      " |      ...    .pipe(g, arg1=a)\n",
      " |      ...    .pipe((f, 'arg2'), arg1=a, arg3=c)\n",
      " |      ...  )\n",
      " |  \n",
      " |  pop(self, item)\n",
      " |      Return item and drop from frame. Raise KeyError if not found.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      item : str\n",
      " |          Column label to be popped\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      popped : Series\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([('falcon', 'bird',    389.0),\n",
      " |      ...                    ('parrot', 'bird',     24.0),\n",
      " |      ...                    ('lion',   'mammal',   80.5),\n",
      " |      ...                    ('monkey', 'mammal', np.nan)],\n",
      " |      ...                   columns=('name', 'class', 'max_speed'))\n",
      " |      >>> df\n",
      " |           name   class  max_speed\n",
      " |      0  falcon    bird      389.0\n",
      " |      1  parrot    bird       24.0\n",
      " |      2    lion  mammal       80.5\n",
      " |      3  monkey  mammal        NaN\n",
      " |      \n",
      " |      >>> df.pop('class')\n",
      " |      0      bird\n",
      " |      1      bird\n",
      " |      2    mammal\n",
      " |      3    mammal\n",
      " |      Name: class, dtype: object\n",
      " |      \n",
      " |      >>> df\n",
      " |           name  max_speed\n",
      " |      0  falcon      389.0\n",
      " |      1  parrot       24.0\n",
      " |      2    lion       80.5\n",
      " |      3  monkey        NaN\n",
      " |  \n",
      " |  rank(self, axis=0, method='average', numeric_only=None, na_option='keep', ascending=True, pct=False)\n",
      " |      Compute numerical data ranks (1 through n) along axis. Equal values are\n",
      " |      assigned a rank that is the average of the ranks of those values.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          index to direct ranking\n",
      " |      method : {'average', 'min', 'max', 'first', 'dense'}\n",
      " |          * average: average rank of group\n",
      " |          * min: lowest rank in group\n",
      " |          * max: highest rank in group\n",
      " |          * first: ranks assigned in order they appear in the array\n",
      " |          * dense: like 'min', but rank always increases by 1 between groups\n",
      " |      numeric_only : boolean, default None\n",
      " |          Include only float, int, boolean data. Valid only for DataFrame or\n",
      " |          Panel objects\n",
      " |      na_option : {'keep', 'top', 'bottom'}\n",
      " |          * keep: leave NA values where they are\n",
      " |          * top: smallest rank if ascending\n",
      " |          * bottom: smallest rank if descending\n",
      " |      ascending : boolean, default True\n",
      " |          False for ranks by high (1) to low (N)\n",
      " |      pct : boolean, default False\n",
      " |          Computes percentage rank of data\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      ranks : same type as caller\n",
      " |  \n",
      " |  reindex_like(self, other, method=None, copy=True, limit=None, tolerance=None)\n",
      " |      Return an object with matching indices as other object.\n",
      " |      \n",
      " |      Conform the object to the same index on all axes. Optional\n",
      " |      filling logic, placing NaN in locations having no value\n",
      " |      in the previous index. A new object is produced unless the\n",
      " |      new index is equivalent to the current one and copy=False.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      other : Object of the same data type\n",
      " |          Its row and column indices are used to define the new indices\n",
      " |          of this object.\n",
      " |      method : {None, 'backfill'/'bfill', 'pad'/'ffill', 'nearest'}\n",
      " |          Method to use for filling holes in reindexed DataFrame.\n",
      " |          Please note: this is only applicable to DataFrames/Series with a\n",
      " |          monotonically increasing/decreasing index.\n",
      " |      \n",
      " |          * None (default): don't fill gaps\n",
      " |          * pad / ffill: propagate last valid observation forward to next\n",
      " |            valid\n",
      " |          * backfill / bfill: use next valid observation to fill gap\n",
      " |          * nearest: use nearest valid observations to fill gap\n",
      " |      \n",
      " |      copy : bool, default True\n",
      " |          Return a new object, even if the passed indexes are the same.\n",
      " |      limit : int, default None\n",
      " |          Maximum number of consecutive labels to fill for inexact matches.\n",
      " |      tolerance : optional\n",
      " |          Maximum distance between original and new labels for inexact\n",
      " |          matches. The values of the index at the matching locations most\n",
      " |          satisfy the equation ``abs(index[indexer] - target) <= tolerance``.\n",
      " |      \n",
      " |          Tolerance may be a scalar value, which applies the same tolerance\n",
      " |          to all values, or list-like, which applies variable tolerance per\n",
      " |          element. List-like includes list, tuple, array, Series, and must be\n",
      " |          the same size as the index and its dtype must exactly match the\n",
      " |          index's type.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0 (list-like tolerance)\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Same type as caller, but with changed indices on each axis.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.set_index : Set row labels.\n",
      " |      DataFrame.reset_index : Remove row labels or move them to new columns.\n",
      " |      DataFrame.reindex : Change to new indices or expand indices.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Same as calling\n",
      " |      ``.reindex(index=other.index, columns=other.columns,...)``.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df1 = pd.DataFrame([[24.3, 75.7, 'high'],\n",
      " |      ...                     [31, 87.8, 'high'],\n",
      " |      ...                     [22, 71.6, 'medium'],\n",
      " |      ...                     [35, 95, 'medium']],\n",
      " |      ...     columns=['temp_celsius', 'temp_fahrenheit', 'windspeed'],\n",
      " |      ...     index=pd.date_range(start='2014-02-12',\n",
      " |      ...                         end='2014-02-15', freq='D'))\n",
      " |      \n",
      " |      >>> df1\n",
      " |                  temp_celsius  temp_fahrenheit windspeed\n",
      " |      2014-02-12          24.3             75.7      high\n",
      " |      2014-02-13          31.0             87.8      high\n",
      " |      2014-02-14          22.0             71.6    medium\n",
      " |      2014-02-15          35.0             95.0    medium\n",
      " |      \n",
      " |      >>> df2 = pd.DataFrame([[28, 'low'],\n",
      " |      ...                     [30, 'low'],\n",
      " |      ...                     [35.1, 'medium']],\n",
      " |      ...     columns=['temp_celsius', 'windspeed'],\n",
      " |      ...     index=pd.DatetimeIndex(['2014-02-12', '2014-02-13',\n",
      " |      ...                             '2014-02-15']))\n",
      " |      \n",
      " |      >>> df2\n",
      " |                  temp_celsius windspeed\n",
      " |      2014-02-12          28.0       low\n",
      " |      2014-02-13          30.0       low\n",
      " |      2014-02-15          35.1    medium\n",
      " |      \n",
      " |      >>> df2.reindex_like(df1)\n",
      " |                  temp_celsius  temp_fahrenheit windspeed\n",
      " |      2014-02-12          28.0              NaN       low\n",
      " |      2014-02-13          30.0              NaN       low\n",
      " |      2014-02-14           NaN              NaN       NaN\n",
      " |      2014-02-15          35.1              NaN    medium\n",
      " |  \n",
      " |  rename_axis(self, mapper=None, index=None, columns=None, axis=None, copy=True, inplace=False)\n",
      " |      Set the name of the axis for the index or columns.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      mapper : scalar, list-like, optional\n",
      " |          Value to set the axis name attribute.\n",
      " |      index, columns : scalar, list-like, dict-like or function, optional\n",
      " |          A scalar, list-like, dict-like or functions transformations to\n",
      " |          apply to that axis' values.\n",
      " |      \n",
      " |          Use either ``mapper`` and ``axis`` to\n",
      " |          specify the axis to target with ``mapper``, or ``index``\n",
      " |          and/or ``columns``.\n",
      " |      \n",
      " |          .. versionchanged:: 0.24.0\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The axis to rename.\n",
      " |      copy : bool, default True\n",
      " |          Also copy underlying data.\n",
      " |      inplace : bool, default False\n",
      " |          Modifies the object directly, instead of creating a new Series\n",
      " |          or DataFrame.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series, DataFrame, or None\n",
      " |          The same type as the caller or None if `inplace` is True.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.rename : Alter Series index labels or name.\n",
      " |      DataFrame.rename : Alter DataFrame index labels or name.\n",
      " |      Index.rename : Set new names on index.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Prior to version 0.21.0, ``rename_axis`` could also be used to change\n",
      " |      the axis *labels* by passing a mapping or scalar. This behavior is\n",
      " |      deprecated and will be removed in a future version. Use ``rename``\n",
      " |      instead.\n",
      " |      \n",
      " |      ``DataFrame.rename_axis`` supports two calling conventions\n",
      " |      \n",
      " |      * ``(index=index_mapper, columns=columns_mapper, ...)``\n",
      " |      * ``(mapper, axis={'index', 'columns'}, ...)``\n",
      " |      \n",
      " |      The first calling convention will only modify the names of\n",
      " |      the index and/or the names of the Index object that is the columns.\n",
      " |      In this case, the parameter ``copy`` is ignored.\n",
      " |      \n",
      " |      The second calling convention will modify the names of the\n",
      " |      the corresponding index if mapper is a list or a scalar.\n",
      " |      However, if mapper is dict-like or a function, it will use the\n",
      " |      deprecated behavior of modifying the axis *labels*.\n",
      " |      \n",
      " |      We *highly* recommend using keyword arguments to clarify your\n",
      " |      intent.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([\"dog\", \"cat\", \"monkey\"])\n",
      " |      >>> s\n",
      " |      0       dog\n",
      " |      1       cat\n",
      " |      2    monkey\n",
      " |      dtype: object\n",
      " |      >>> s.rename_axis(\"animal\")\n",
      " |      animal\n",
      " |      0    dog\n",
      " |      1    cat\n",
      " |      2    monkey\n",
      " |      dtype: object\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"num_legs\": [4, 4, 2],\n",
      " |      ...                    \"num_arms\": [0, 0, 2]},\n",
      " |      ...                   [\"dog\", \"cat\", \"monkey\"])\n",
      " |      >>> df\n",
      " |              num_legs  num_arms\n",
      " |      dog            4         0\n",
      " |      cat            4         0\n",
      " |      monkey         2         2\n",
      " |      >>> df = df.rename_axis(\"animal\")\n",
      " |      >>> df\n",
      " |              num_legs  num_arms\n",
      " |      animal\n",
      " |      dog            4         0\n",
      " |      cat            4         0\n",
      " |      monkey         2         2\n",
      " |      >>> df = df.rename_axis(\"limbs\", axis=\"columns\")\n",
      " |      >>> df\n",
      " |      limbs   num_legs  num_arms\n",
      " |      animal\n",
      " |      dog            4         0\n",
      " |      cat            4         0\n",
      " |      monkey         2         2\n",
      " |      \n",
      " |      **MultiIndex**\n",
      " |      \n",
      " |      >>> df.index = pd.MultiIndex.from_product([['mammal'],\n",
      " |      ...                                        ['dog', 'cat', 'monkey']],\n",
      " |      ...                                       names=['type', 'name'])\n",
      " |      >>> df\n",
      " |      limbs          num_legs  num_arms\n",
      " |      type   name\n",
      " |      mammal dog            4         0\n",
      " |             cat            4         0\n",
      " |             monkey         2         2\n",
      " |      \n",
      " |      >>> df.rename_axis(index={'type': 'class'})\n",
      " |      limbs          num_legs  num_arms\n",
      " |      class  name\n",
      " |      mammal dog            4         0\n",
      " |             cat            4         0\n",
      " |             monkey         2         2\n",
      " |      \n",
      " |      >>> df.rename_axis(columns=str.upper)\n",
      " |      LIMBS          num_legs  num_arms\n",
      " |      type   name\n",
      " |      mammal dog            4         0\n",
      " |             cat            4         0\n",
      " |             monkey         2         2\n",
      " |  \n",
      " |  resample(self, rule, how=None, axis=0, fill_method=None, closed=None, label=None, convention='start', kind=None, loffset=None, limit=None, base=0, on=None, level=None)\n",
      " |      Resample time-series data.\n",
      " |      \n",
      " |      Convenience method for frequency conversion and resampling of time\n",
      " |      series. Object must have a datetime-like index (`DatetimeIndex`,\n",
      " |      `PeriodIndex`, or `TimedeltaIndex`), or pass datetime-like values\n",
      " |      to the `on` or `level` keyword.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      rule : str\n",
      " |          The offset string or object representing target conversion.\n",
      " |      how : str\n",
      " |          Method for down/re-sampling, default to 'mean' for downsampling.\n",
      " |      \n",
      " |          .. deprecated:: 0.18.0\n",
      " |             The new syntax is ``.resample(...).mean()``, or\n",
      " |             ``.resample(...).apply(<func>)``\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          Which axis to use for up- or down-sampling. For `Series` this\n",
      " |          will default to 0, i.e. along the rows. Must be\n",
      " |          `DatetimeIndex`, `TimedeltaIndex` or `PeriodIndex`.\n",
      " |      fill_method : str, default None\n",
      " |          Filling method for upsampling.\n",
      " |      \n",
      " |          .. deprecated:: 0.18.0\n",
      " |             The new syntax is ``.resample(...).<func>()``,\n",
      " |             e.g. ``.resample(...).pad()``\n",
      " |      closed : {'right', 'left'}, default None\n",
      " |          Which side of bin interval is closed. The default is 'left'\n",
      " |          for all frequency offsets except for 'M', 'A', 'Q', 'BM',\n",
      " |          'BA', 'BQ', and 'W' which all have a default of 'right'.\n",
      " |      label : {'right', 'left'}, default None\n",
      " |          Which bin edge label to label bucket with. The default is 'left'\n",
      " |          for all frequency offsets except for 'M', 'A', 'Q', 'BM',\n",
      " |          'BA', 'BQ', and 'W' which all have a default of 'right'.\n",
      " |      convention : {'start', 'end', 's', 'e'}, default 'start'\n",
      " |          For `PeriodIndex` only, controls whether to use the start or\n",
      " |          end of `rule`.\n",
      " |      kind : {'timestamp', 'period'}, optional, default None\n",
      " |          Pass 'timestamp' to convert the resulting index to a\n",
      " |          `DateTimeIndex` or 'period' to convert it to a `PeriodIndex`.\n",
      " |          By default the input representation is retained.\n",
      " |      loffset : timedelta, default None\n",
      " |          Adjust the resampled time labels.\n",
      " |      limit : int, default None\n",
      " |          Maximum size gap when reindexing with `fill_method`.\n",
      " |      \n",
      " |          .. deprecated:: 0.18.0\n",
      " |      base : int, default 0\n",
      " |          For frequencies that evenly subdivide 1 day, the \"origin\" of the\n",
      " |          aggregated intervals. For example, for '5min' frequency, base could\n",
      " |          range from 0 through 4. Defaults to 0.\n",
      " |      on : str, optional\n",
      " |          For a DataFrame, column to use instead of index for resampling.\n",
      " |          Column must be datetime-like.\n",
      " |      \n",
      " |          .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      level : str or int, optional\n",
      " |          For a MultiIndex, level (name or number) to use for\n",
      " |          resampling. `level` must be datetime-like.\n",
      " |      \n",
      " |          .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Resampler object\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      groupby : Group by mapping, function, label, or list of labels.\n",
      " |      Series.resample : Resample a Series.\n",
      " |      DataFrame.resample: Resample a DataFrame.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      See the `user guide\n",
      " |      <http://pandas.pydata.org/pandas-docs/stable/timeseries.html#resampling>`_\n",
      " |      for more.\n",
      " |      \n",
      " |      To learn more about the offset strings, please see `this link\n",
      " |      <http://pandas.pydata.org/pandas-docs/stable/timeseries.html#offset-aliases>`__.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Start by creating a series with 9 one minute timestamps.\n",
      " |      \n",
      " |      >>> index = pd.date_range('1/1/2000', periods=9, freq='T')\n",
      " |      >>> series = pd.Series(range(9), index=index)\n",
      " |      >>> series\n",
      " |      2000-01-01 00:00:00    0\n",
      " |      2000-01-01 00:01:00    1\n",
      " |      2000-01-01 00:02:00    2\n",
      " |      2000-01-01 00:03:00    3\n",
      " |      2000-01-01 00:04:00    4\n",
      " |      2000-01-01 00:05:00    5\n",
      " |      2000-01-01 00:06:00    6\n",
      " |      2000-01-01 00:07:00    7\n",
      " |      2000-01-01 00:08:00    8\n",
      " |      Freq: T, dtype: int64\n",
      " |      \n",
      " |      Downsample the series into 3 minute bins and sum the values\n",
      " |      of the timestamps falling into a bin.\n",
      " |      \n",
      " |      >>> series.resample('3T').sum()\n",
      " |      2000-01-01 00:00:00     3\n",
      " |      2000-01-01 00:03:00    12\n",
      " |      2000-01-01 00:06:00    21\n",
      " |      Freq: 3T, dtype: int64\n",
      " |      \n",
      " |      Downsample the series into 3 minute bins as above, but label each\n",
      " |      bin using the right edge instead of the left. Please note that the\n",
      " |      value in the bucket used as the label is not included in the bucket,\n",
      " |      which it labels. For example, in the original series the\n",
      " |      bucket ``2000-01-01 00:03:00`` contains the value 3, but the summed\n",
      " |      value in the resampled bucket with the label ``2000-01-01 00:03:00``\n",
      " |      does not include 3 (if it did, the summed value would be 6, not 3).\n",
      " |      To include this value close the right side of the bin interval as\n",
      " |      illustrated in the example below this one.\n",
      " |      \n",
      " |      >>> series.resample('3T', label='right').sum()\n",
      " |      2000-01-01 00:03:00     3\n",
      " |      2000-01-01 00:06:00    12\n",
      " |      2000-01-01 00:09:00    21\n",
      " |      Freq: 3T, dtype: int64\n",
      " |      \n",
      " |      Downsample the series into 3 minute bins as above, but close the right\n",
      " |      side of the bin interval.\n",
      " |      \n",
      " |      >>> series.resample('3T', label='right', closed='right').sum()\n",
      " |      2000-01-01 00:00:00     0\n",
      " |      2000-01-01 00:03:00     6\n",
      " |      2000-01-01 00:06:00    15\n",
      " |      2000-01-01 00:09:00    15\n",
      " |      Freq: 3T, dtype: int64\n",
      " |      \n",
      " |      Upsample the series into 30 second bins.\n",
      " |      \n",
      " |      >>> series.resample('30S').asfreq()[0:5]   # Select first 5 rows\n",
      " |      2000-01-01 00:00:00   0.0\n",
      " |      2000-01-01 00:00:30   NaN\n",
      " |      2000-01-01 00:01:00   1.0\n",
      " |      2000-01-01 00:01:30   NaN\n",
      " |      2000-01-01 00:02:00   2.0\n",
      " |      Freq: 30S, dtype: float64\n",
      " |      \n",
      " |      Upsample the series into 30 second bins and fill the ``NaN``\n",
      " |      values using the ``pad`` method.\n",
      " |      \n",
      " |      >>> series.resample('30S').pad()[0:5]\n",
      " |      2000-01-01 00:00:00    0\n",
      " |      2000-01-01 00:00:30    0\n",
      " |      2000-01-01 00:01:00    1\n",
      " |      2000-01-01 00:01:30    1\n",
      " |      2000-01-01 00:02:00    2\n",
      " |      Freq: 30S, dtype: int64\n",
      " |      \n",
      " |      Upsample the series into 30 second bins and fill the\n",
      " |      ``NaN`` values using the ``bfill`` method.\n",
      " |      \n",
      " |      >>> series.resample('30S').bfill()[0:5]\n",
      " |      2000-01-01 00:00:00    0\n",
      " |      2000-01-01 00:00:30    1\n",
      " |      2000-01-01 00:01:00    1\n",
      " |      2000-01-01 00:01:30    2\n",
      " |      2000-01-01 00:02:00    2\n",
      " |      Freq: 30S, dtype: int64\n",
      " |      \n",
      " |      Pass a custom function via ``apply``\n",
      " |      \n",
      " |      >>> def custom_resampler(array_like):\n",
      " |      ...     return np.sum(array_like) + 5\n",
      " |      ...\n",
      " |      >>> series.resample('3T').apply(custom_resampler)\n",
      " |      2000-01-01 00:00:00     8\n",
      " |      2000-01-01 00:03:00    17\n",
      " |      2000-01-01 00:06:00    26\n",
      " |      Freq: 3T, dtype: int64\n",
      " |      \n",
      " |      For a Series with a PeriodIndex, the keyword `convention` can be\n",
      " |      used to control whether to use the start or end of `rule`.\n",
      " |      \n",
      " |      Resample a year by quarter using 'start' `convention`. Values are\n",
      " |      assigned to the first quarter of the period.\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2], index=pd.period_range('2012-01-01',\n",
      " |      ...                                             freq='A',\n",
      " |      ...                                             periods=2))\n",
      " |      >>> s\n",
      " |      2012    1\n",
      " |      2013    2\n",
      " |      Freq: A-DEC, dtype: int64\n",
      " |      >>> s.resample('Q', convention='start').asfreq()\n",
      " |      2012Q1    1.0\n",
      " |      2012Q2    NaN\n",
      " |      2012Q3    NaN\n",
      " |      2012Q4    NaN\n",
      " |      2013Q1    2.0\n",
      " |      2013Q2    NaN\n",
      " |      2013Q3    NaN\n",
      " |      2013Q4    NaN\n",
      " |      Freq: Q-DEC, dtype: float64\n",
      " |      \n",
      " |      Resample quarters by month using 'end' `convention`. Values are\n",
      " |      assigned to the last month of the period.\n",
      " |      \n",
      " |      >>> q = pd.Series([1, 2, 3, 4], index=pd.period_range('2018-01-01',\n",
      " |      ...                                                   freq='Q',\n",
      " |      ...                                                   periods=4))\n",
      " |      >>> q\n",
      " |      2018Q1    1\n",
      " |      2018Q2    2\n",
      " |      2018Q3    3\n",
      " |      2018Q4    4\n",
      " |      Freq: Q-DEC, dtype: int64\n",
      " |      >>> q.resample('M', convention='end').asfreq()\n",
      " |      2018-03    1.0\n",
      " |      2018-04    NaN\n",
      " |      2018-05    NaN\n",
      " |      2018-06    2.0\n",
      " |      2018-07    NaN\n",
      " |      2018-08    NaN\n",
      " |      2018-09    3.0\n",
      " |      2018-10    NaN\n",
      " |      2018-11    NaN\n",
      " |      2018-12    4.0\n",
      " |      Freq: M, dtype: float64\n",
      " |      \n",
      " |      For DataFrame objects, the keyword `on` can be used to specify the\n",
      " |      column instead of the index for resampling.\n",
      " |      \n",
      " |      >>> d = dict({'price': [10, 11, 9, 13, 14, 18, 17, 19],\n",
      " |      ...           'volume': [50, 60, 40, 100, 50, 100, 40, 50]})\n",
      " |      >>> df = pd.DataFrame(d)\n",
      " |      >>> df['week_starting'] = pd.date_range('01/01/2018',\n",
      " |      ...                                     periods=8,\n",
      " |      ...                                     freq='W')\n",
      " |      >>> df\n",
      " |         price  volume week_starting\n",
      " |      0     10      50    2018-01-07\n",
      " |      1     11      60    2018-01-14\n",
      " |      2      9      40    2018-01-21\n",
      " |      3     13     100    2018-01-28\n",
      " |      4     14      50    2018-02-04\n",
      " |      5     18     100    2018-02-11\n",
      " |      6     17      40    2018-02-18\n",
      " |      7     19      50    2018-02-25\n",
      " |      >>> df.resample('M', on='week_starting').mean()\n",
      " |                     price  volume\n",
      " |      week_starting\n",
      " |      2018-01-31     10.75    62.5\n",
      " |      2018-02-28     17.00    60.0\n",
      " |      \n",
      " |      For a DataFrame with MultiIndex, the keyword `level` can be used to\n",
      " |      specify on which level the resampling needs to take place.\n",
      " |      \n",
      " |      >>> days = pd.date_range('1/1/2000', periods=4, freq='D')\n",
      " |      >>> d2 = dict({'price': [10, 11, 9, 13, 14, 18, 17, 19],\n",
      " |      ...            'volume': [50, 60, 40, 100, 50, 100, 40, 50]})\n",
      " |      >>> df2 = pd.DataFrame(d2,\n",
      " |      ...                    index=pd.MultiIndex.from_product([days,\n",
      " |      ...                                                     ['morning',\n",
      " |      ...                                                      'afternoon']]\n",
      " |      ...                                                     ))\n",
      " |      >>> df2\n",
      " |                            price  volume\n",
      " |      2000-01-01 morning       10      50\n",
      " |                 afternoon     11      60\n",
      " |      2000-01-02 morning        9      40\n",
      " |                 afternoon     13     100\n",
      " |      2000-01-03 morning       14      50\n",
      " |                 afternoon     18     100\n",
      " |      2000-01-04 morning       17      40\n",
      " |                 afternoon     19      50\n",
      " |      >>> df2.resample('D', level=0).sum()\n",
      " |                  price  volume\n",
      " |      2000-01-01     21     110\n",
      " |      2000-01-02     22     140\n",
      " |      2000-01-03     32     150\n",
      " |      2000-01-04     36      90\n",
      " |  \n",
      " |  sample(self, n=None, frac=None, replace=False, weights=None, random_state=None, axis=None)\n",
      " |      Return a random sample of items from an axis of object.\n",
      " |      \n",
      " |      You can use `random_state` for reproducibility.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      n : int, optional\n",
      " |          Number of items from axis to return. Cannot be used with `frac`.\n",
      " |          Default = 1 if `frac` = None.\n",
      " |      frac : float, optional\n",
      " |          Fraction of axis items to return. Cannot be used with `n`.\n",
      " |      replace : bool, default False\n",
      " |          Sample with or without replacement.\n",
      " |      weights : str or ndarray-like, optional\n",
      " |          Default 'None' results in equal probability weighting.\n",
      " |          If passed a Series, will align with target object on index. Index\n",
      " |          values in weights not found in sampled object will be ignored and\n",
      " |          index values in sampled object not in weights will be assigned\n",
      " |          weights of zero.\n",
      " |          If called on a DataFrame, will accept the name of a column\n",
      " |          when axis = 0.\n",
      " |          Unless weights are a Series, weights must be same length as axis\n",
      " |          being sampled.\n",
      " |          If weights do not sum to 1, they will be normalized to sum to 1.\n",
      " |          Missing values in the weights column will be treated as zero.\n",
      " |          Infinite values not allowed.\n",
      " |      random_state : int or numpy.random.RandomState, optional\n",
      " |          Seed for the random number generator (if int), or numpy RandomState\n",
      " |          object.\n",
      " |      axis : int or string, optional\n",
      " |          Axis to sample. Accepts axis number or name. Default is stat axis\n",
      " |          for given data type (0 for Series and DataFrames, 1 for Panels).\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          A new object of same type as caller containing `n` items randomly\n",
      " |          sampled from the caller object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      numpy.random.choice: Generates a random sample from a given 1-D numpy\n",
      " |          array.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'num_legs': [2, 4, 8, 0],\n",
      " |      ...                    'num_wings': [2, 0, 0, 0],\n",
      " |      ...                    'num_specimen_seen': [10, 2, 1, 8]},\n",
      " |      ...                   index=['falcon', 'dog', 'spider', 'fish'])\n",
      " |      >>> df\n",
      " |              num_legs  num_wings  num_specimen_seen\n",
      " |      falcon         2          2                 10\n",
      " |      dog            4          0                  2\n",
      " |      spider         8          0                  1\n",
      " |      fish           0          0                  8\n",
      " |      \n",
      " |      Extract 3 random elements from the ``Series`` ``df['num_legs']``:\n",
      " |      Note that we use `random_state` to ensure the reproducibility of\n",
      " |      the examples.\n",
      " |      \n",
      " |      >>> df['num_legs'].sample(n=3, random_state=1)\n",
      " |      fish      0\n",
      " |      spider    8\n",
      " |      falcon    2\n",
      " |      Name: num_legs, dtype: int64\n",
      " |      \n",
      " |      A random 50% sample of the ``DataFrame`` with replacement:\n",
      " |      \n",
      " |      >>> df.sample(frac=0.5, replace=True, random_state=1)\n",
      " |            num_legs  num_wings  num_specimen_seen\n",
      " |      dog          4          0                  2\n",
      " |      fish         0          0                  8\n",
      " |      \n",
      " |      Using a DataFrame column as weights. Rows with larger value in the\n",
      " |      `num_specimen_seen` column are more likely to be sampled.\n",
      " |      \n",
      " |      >>> df.sample(n=2, weights='num_specimen_seen', random_state=1)\n",
      " |              num_legs  num_wings  num_specimen_seen\n",
      " |      falcon         2          2                 10\n",
      " |      fish           0          0                  8\n",
      " |  \n",
      " |  select(self, crit, axis=0)\n",
      " |      Return data corresponding to axis labels matching criteria.\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |          Use df.loc[df.index.map(crit)] to select via labels\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      crit : function\n",
      " |          To be called on each index (label). Should return True or False\n",
      " |      axis : int\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      selection : same type as caller\n",
      " |  \n",
      " |  set_axis(self, labels, axis=0, inplace=None)\n",
      " |      Assign desired index to given axis.\n",
      " |      \n",
      " |      Indexes for column or row labels can be changed by assigning\n",
      " |      a list-like or Index.\n",
      " |      \n",
      " |      .. versionchanged:: 0.21.0\n",
      " |      \n",
      " |         The signature is now `labels` and `axis`, consistent with\n",
      " |         the rest of pandas API. Previously, the `axis` and `labels`\n",
      " |         arguments were respectively the first and second positional\n",
      " |         arguments.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      labels : list-like, Index\n",
      " |          The values for the new index.\n",
      " |      \n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          The axis to update. The value 0 identifies the rows, and 1\n",
      " |          identifies the columns.\n",
      " |      \n",
      " |      inplace : boolean, default None\n",
      " |          Whether to return a new %(klass)s instance.\n",
      " |      \n",
      " |          .. warning::\n",
      " |      \n",
      " |             ``inplace=None`` currently falls back to to True, but in a\n",
      " |             future version, will default to False. Use inplace=True\n",
      " |             explicitly rather than relying on the default.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      renamed : %(klass)s or None\n",
      " |          An object of same type as caller if inplace=False, None otherwise.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.rename_axis : Alter the name of the index or columns.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Series**\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, 3])\n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> s.set_axis(['a', 'b', 'c'], axis=0, inplace=False)\n",
      " |      a    1\n",
      " |      b    2\n",
      " |      c    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      The original object is not modified.\n",
      " |      \n",
      " |      >>> s\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      **DataFrame**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [1, 2, 3], \"B\": [4, 5, 6]})\n",
      " |      \n",
      " |      Change the row labels.\n",
      " |      \n",
      " |      >>> df.set_axis(['a', 'b', 'c'], axis='index', inplace=False)\n",
      " |         A  B\n",
      " |      a  1  4\n",
      " |      b  2  5\n",
      " |      c  3  6\n",
      " |      \n",
      " |      Change the column labels.\n",
      " |      \n",
      " |      >>> df.set_axis(['I', 'II'], axis='columns', inplace=False)\n",
      " |         I  II\n",
      " |      0  1   4\n",
      " |      1  2   5\n",
      " |      2  3   6\n",
      " |      \n",
      " |      Now, update the labels inplace.\n",
      " |      \n",
      " |      >>> df.set_axis(['i', 'ii'], axis='columns', inplace=True)\n",
      " |      >>> df\n",
      " |         i  ii\n",
      " |      0  1   4\n",
      " |      1  2   5\n",
      " |      2  3   6\n",
      " |  \n",
      " |  slice_shift(self, periods=1, axis=0)\n",
      " |      Equivalent to `shift` without copying data. The shifted data will\n",
      " |      not include the dropped periods and the shifted axis will be smaller\n",
      " |      than the original.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      periods : int\n",
      " |          Number of periods to move, can be positive or negative\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      shifted : same type as caller\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      While the `slice_shift` is faster than `shift`, you may pay for it\n",
      " |      later during alignment.\n",
      " |  \n",
      " |  squeeze(self, axis=None)\n",
      " |      Squeeze 1 dimensional axis objects into scalars.\n",
      " |      \n",
      " |      Series or DataFrames with a single element are squeezed to a scalar.\n",
      " |      DataFrames with a single column or a single row are squeezed to a\n",
      " |      Series. Otherwise the object is unchanged.\n",
      " |      \n",
      " |      This method is most useful when you don't know if your\n",
      " |      object is a Series or DataFrame, but you do know it has just a single\n",
      " |      column. In that case you can safely call `squeeze` to ensure you have a\n",
      " |      Series.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default None\n",
      " |          A specific axis to squeeze. By default, all length-1 axes are\n",
      " |          squeezed.\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      DataFrame, Series, or scalar\n",
      " |          The projection after squeezing `axis` or all the axes.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      Series.iloc : Integer-location based indexing for selecting scalars.\n",
      " |      DataFrame.iloc : Integer-location based indexing for selecting Series.\n",
      " |      Series.to_frame : Inverse of DataFrame.squeeze for a\n",
      " |          single-column DataFrame.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> primes = pd.Series([2, 3, 5, 7])\n",
      " |      \n",
      " |      Slicing might produce a Series with a single value:\n",
      " |      \n",
      " |      >>> even_primes = primes[primes % 2 == 0]\n",
      " |      >>> even_primes\n",
      " |      0    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> even_primes.squeeze()\n",
      " |      2\n",
      " |      \n",
      " |      Squeezing objects with more than one value in every axis does nothing:\n",
      " |      \n",
      " |      >>> odd_primes = primes[primes % 2 == 1]\n",
      " |      >>> odd_primes\n",
      " |      1    3\n",
      " |      2    5\n",
      " |      3    7\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> odd_primes.squeeze()\n",
      " |      1    3\n",
      " |      2    5\n",
      " |      3    7\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Squeezing is even more effective when used with DataFrames.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[1, 2], [3, 4]], columns=['a', 'b'])\n",
      " |      >>> df\n",
      " |         a  b\n",
      " |      0  1  2\n",
      " |      1  3  4\n",
      " |      \n",
      " |      Slicing a single column will produce a DataFrame with the columns\n",
      " |      having only one value:\n",
      " |      \n",
      " |      >>> df_a = df[['a']]\n",
      " |      >>> df_a\n",
      " |         a\n",
      " |      0  1\n",
      " |      1  3\n",
      " |      \n",
      " |      So the columns can be squeezed down, resulting in a Series:\n",
      " |      \n",
      " |      >>> df_a.squeeze('columns')\n",
      " |      0    1\n",
      " |      1    3\n",
      " |      Name: a, dtype: int64\n",
      " |      \n",
      " |      Slicing a single row from a single column will produce a single\n",
      " |      scalar DataFrame:\n",
      " |      \n",
      " |      >>> df_0a = df.loc[df.index < 1, ['a']]\n",
      " |      >>> df_0a\n",
      " |         a\n",
      " |      0  1\n",
      " |      \n",
      " |      Squeezing the rows produces a single scalar Series:\n",
      " |      \n",
      " |      >>> df_0a.squeeze('rows')\n",
      " |      a    1\n",
      " |      Name: 0, dtype: int64\n",
      " |      \n",
      " |      Squeezing all axes wil project directly into a scalar:\n",
      " |      \n",
      " |      >>> df_0a.squeeze()\n",
      " |      1\n",
      " |  \n",
      " |  swapaxes(self, axis1, axis2, copy=True)\n",
      " |      Interchange axes and swap values axes appropriately.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      y : same as input\n",
      " |  \n",
      " |  tail(self, n=5)\n",
      " |      Return the last `n` rows.\n",
      " |      \n",
      " |      This function returns last `n` rows from the object based on\n",
      " |      position. It is useful for quickly verifying data, for example,\n",
      " |      after sorting or appending rows.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      n : int, default 5\n",
      " |          Number of rows to select.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      type of caller\n",
      " |          The last `n` rows of the caller object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.head : The first `n` rows of the caller object.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'animal':['alligator', 'bee', 'falcon', 'lion',\n",
      " |      ...                    'monkey', 'parrot', 'shark', 'whale', 'zebra']})\n",
      " |      >>> df\n",
      " |            animal\n",
      " |      0  alligator\n",
      " |      1        bee\n",
      " |      2     falcon\n",
      " |      3       lion\n",
      " |      4     monkey\n",
      " |      5     parrot\n",
      " |      6      shark\n",
      " |      7      whale\n",
      " |      8      zebra\n",
      " |      \n",
      " |      Viewing the last 5 lines\n",
      " |      \n",
      " |      >>> df.tail()\n",
      " |         animal\n",
      " |      4  monkey\n",
      " |      5  parrot\n",
      " |      6   shark\n",
      " |      7   whale\n",
      " |      8   zebra\n",
      " |      \n",
      " |      Viewing the last `n` lines (three in this case)\n",
      " |      \n",
      " |      >>> df.tail(3)\n",
      " |        animal\n",
      " |      6  shark\n",
      " |      7  whale\n",
      " |      8  zebra\n",
      " |  \n",
      " |  take(self, indices, axis=0, convert=None, is_copy=True, **kwargs)\n",
      " |      Return the elements in the given *positional* indices along an axis.\n",
      " |      \n",
      " |      This means that we are not indexing according to actual values in\n",
      " |      the index attribute of the object. We are indexing according to the\n",
      " |      actual position of the element in the object.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      indices : array-like\n",
      " |          An array of ints indicating which positions to take.\n",
      " |      axis : {0 or 'index', 1 or 'columns', None}, default 0\n",
      " |          The axis on which to select elements. ``0`` means that we are\n",
      " |          selecting rows, ``1`` means that we are selecting columns.\n",
      " |      convert : bool, default True\n",
      " |          Whether to convert negative indices into positive ones.\n",
      " |          For example, ``-1`` would map to the ``len(axis) - 1``.\n",
      " |          The conversions are similar to the behavior of indexing a\n",
      " |          regular Python list.\n",
      " |      \n",
      " |          .. deprecated:: 0.21.0\n",
      " |             In the future, negative indices will always be converted.\n",
      " |      \n",
      " |      is_copy : bool, default True\n",
      " |          Whether to return a copy of the original object or not.\n",
      " |      **kwargs\n",
      " |          For compatibility with :meth:`numpy.take`. Has no effect on the\n",
      " |          output.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      taken : same type as caller\n",
      " |          An array-like containing the elements taken from the object.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.loc : Select a subset of a DataFrame by labels.\n",
      " |      DataFrame.iloc : Select a subset of a DataFrame by positions.\n",
      " |      numpy.take : Take elements from an array along an axis.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([('falcon', 'bird',    389.0),\n",
      " |      ...                    ('parrot', 'bird',     24.0),\n",
      " |      ...                    ('lion',   'mammal',   80.5),\n",
      " |      ...                    ('monkey', 'mammal', np.nan)],\n",
      " |      ...                    columns=['name', 'class', 'max_speed'],\n",
      " |      ...                    index=[0, 2, 3, 1])\n",
      " |      >>> df\n",
      " |           name   class  max_speed\n",
      " |      0  falcon    bird      389.0\n",
      " |      2  parrot    bird       24.0\n",
      " |      3    lion  mammal       80.5\n",
      " |      1  monkey  mammal        NaN\n",
      " |      \n",
      " |      Take elements at positions 0 and 3 along the axis 0 (default).\n",
      " |      \n",
      " |      Note how the actual indices selected (0 and 1) do not correspond to\n",
      " |      our selected indices 0 and 3. That's because we are selecting the 0th\n",
      " |      and 3rd rows, not rows whose indices equal 0 and 3.\n",
      " |      \n",
      " |      >>> df.take([0, 3])\n",
      " |           name   class  max_speed\n",
      " |      0  falcon    bird      389.0\n",
      " |      1  monkey  mammal        NaN\n",
      " |      \n",
      " |      Take elements at indices 1 and 2 along the axis 1 (column selection).\n",
      " |      \n",
      " |      >>> df.take([1, 2], axis=1)\n",
      " |          class  max_speed\n",
      " |      0    bird      389.0\n",
      " |      2    bird       24.0\n",
      " |      3  mammal       80.5\n",
      " |      1  mammal        NaN\n",
      " |      \n",
      " |      We may take elements using negative integers for positive indices,\n",
      " |      starting from the end of the object, just like with Python lists.\n",
      " |      \n",
      " |      >>> df.take([-1, -2])\n",
      " |           name   class  max_speed\n",
      " |      1  monkey  mammal        NaN\n",
      " |      3    lion  mammal       80.5\n",
      " |  \n",
      " |  to_clipboard(self, excel=True, sep=None, **kwargs)\n",
      " |      Copy object to the system clipboard.\n",
      " |      \n",
      " |      Write a text representation of object to the system clipboard.\n",
      " |      This can be pasted into Excel, for example.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      excel : bool, default True\n",
      " |          - True, use the provided separator, writing in a csv format for\n",
      " |            allowing easy pasting into excel.\n",
      " |          - False, write a string representation of the object to the\n",
      " |            clipboard.\n",
      " |      \n",
      " |      sep : str, default ``'\\t'``\n",
      " |          Field delimiter.\n",
      " |      **kwargs\n",
      " |          These parameters will be passed to DataFrame.to_csv.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.to_csv : Write a DataFrame to a comma-separated values\n",
      " |          (csv) file.\n",
      " |      read_clipboard : Read text from clipboard and pass to read_table.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Requirements for your platform.\n",
      " |      \n",
      " |        - Linux : `xclip`, or `xsel` (with `gtk` or `PyQt4` modules)\n",
      " |        - Windows : none\n",
      " |        - OS X : none\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      Copy the contents of a DataFrame to the clipboard.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[1, 2, 3], [4, 5, 6]], columns=['A', 'B', 'C'])\n",
      " |      >>> df.to_clipboard(sep=',')\n",
      " |      ... # Wrote the following to the system clipboard:\n",
      " |      ... # ,A,B,C\n",
      " |      ... # 0,1,2,3\n",
      " |      ... # 1,4,5,6\n",
      " |      \n",
      " |      We can omit the the index by passing the keyword `index` and setting\n",
      " |      it to false.\n",
      " |      \n",
      " |      >>> df.to_clipboard(sep=',', index=False)\n",
      " |      ... # Wrote the following to the system clipboard:\n",
      " |      ... # A,B,C\n",
      " |      ... # 1,2,3\n",
      " |      ... # 4,5,6\n",
      " |  \n",
      " |  to_dense(self)\n",
      " |      Return dense representation of NDFrame (as opposed to sparse).\n",
      " |  \n",
      " |  to_excel(self, excel_writer, sheet_name='Sheet1', na_rep='', float_format=None, columns=None, header=True, index=True, index_label=None, startrow=0, startcol=0, engine=None, merge_cells=True, encoding=None, inf_rep='inf', verbose=True, freeze_panes=None)\n",
      " |      Write object to an Excel sheet.\n",
      " |      \n",
      " |      To write a single object to an Excel .xlsx file it is only necessary to\n",
      " |      specify a target file name. To write to multiple sheets it is necessary to\n",
      " |      create an `ExcelWriter` object with a target file name, and specify a sheet\n",
      " |      in the file to write to.\n",
      " |      \n",
      " |      Multiple sheets may be written to by specifying unique `sheet_name`.\n",
      " |      With all data written to the file it is necessary to save the changes.\n",
      " |      Note that creating an `ExcelWriter` object with a file name that already\n",
      " |      exists will result in the contents of the existing file being erased.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      excel_writer : str or ExcelWriter object\n",
      " |          File path or existing ExcelWriter.\n",
      " |      sheet_name : str, default 'Sheet1'\n",
      " |          Name of sheet which will contain DataFrame.\n",
      " |      na_rep : str, default ''\n",
      " |          Missing data representation.\n",
      " |      float_format : str, optional\n",
      " |          Format string for floating point numbers. For example\n",
      " |          ``float_format=\"%.2f\"`` will format 0.1234 to 0.12.\n",
      " |      columns : sequence or list of str, optional\n",
      " |          Columns to write.\n",
      " |      header : bool or list of str, default True\n",
      " |          Write out the column names. If a list of string is given it is\n",
      " |          assumed to be aliases for the column names.\n",
      " |      index : bool, default True\n",
      " |          Write row names (index).\n",
      " |      index_label : str or sequence, optional\n",
      " |          Column label for index column(s) if desired. If not specified, and\n",
      " |          `header` and `index` are True, then the index names are used. A\n",
      " |          sequence should be given if the DataFrame uses MultiIndex.\n",
      " |      startrow : int, default 0\n",
      " |          Upper left cell row to dump data frame.\n",
      " |      startcol : int, default 0\n",
      " |          Upper left cell column to dump data frame.\n",
      " |      engine : str, optional\n",
      " |          Write engine to use, 'openpyxl' or 'xlsxwriter'. You can also set this\n",
      " |          via the options ``io.excel.xlsx.writer``, ``io.excel.xls.writer``, and\n",
      " |          ``io.excel.xlsm.writer``.\n",
      " |      merge_cells : bool, default True\n",
      " |          Write MultiIndex and Hierarchical Rows as merged cells.\n",
      " |      encoding : str, optional\n",
      " |          Encoding of the resulting excel file. Only necessary for xlwt,\n",
      " |          other writers support unicode natively.\n",
      " |      inf_rep : str, default 'inf'\n",
      " |          Representation for infinity (there is no native representation for\n",
      " |          infinity in Excel).\n",
      " |      verbose : bool, default True\n",
      " |          Display more information in the error logs.\n",
      " |      freeze_panes : tuple of int (length 2), optional\n",
      " |          Specifies the one-based bottommost row and rightmost column that\n",
      " |          is to be frozen.\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      to_csv : Write DataFrame to a comma-separated values (csv) file.\n",
      " |      ExcelWriter : Class for writing DataFrame objects into excel sheets.\n",
      " |      read_excel : Read an Excel file into a pandas DataFrame.\n",
      " |      read_csv : Read a comma-separated values (csv) file into DataFrame.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      For compatibility with :meth:`~DataFrame.to_csv`,\n",
      " |      to_excel serializes lists and dicts to strings before writing.\n",
      " |      \n",
      " |      Once a workbook has been saved it is not possible write further data\n",
      " |      without rewriting the whole workbook.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Create, write to and save a workbook:\n",
      " |      \n",
      " |      >>> df1 = pd.DataFrame([['a', 'b'], ['c', 'd']],\n",
      " |      ...                    index=['row 1', 'row 2'],\n",
      " |      ...                    columns=['col 1', 'col 2'])\n",
      " |      >>> df1.to_excel(\"output.xlsx\")  # doctest: +SKIP\n",
      " |      \n",
      " |      To specify the sheet name:\n",
      " |      \n",
      " |      >>> df1.to_excel(\"output.xlsx\",\n",
      " |      ...              sheet_name='Sheet_name_1')  # doctest: +SKIP\n",
      " |      \n",
      " |      If you wish to write to more than one sheet in the workbook, it is\n",
      " |      necessary to specify an ExcelWriter object:\n",
      " |      \n",
      " |      >>> df2 = df1.copy()\n",
      " |      >>> with pd.ExcelWriter('output.xlsx') as writer:  # doctest: +SKIP\n",
      " |      ...     df1.to_excel(writer, sheet_name='Sheet_name_1')\n",
      " |      ...     df2.to_excel(writer, sheet_name='Sheet_name_2')\n",
      " |      \n",
      " |      To set the library that is used to write the Excel file,\n",
      " |      you can pass the `engine` keyword (the default engine is\n",
      " |      automatically chosen depending on the file extension):\n",
      " |      \n",
      " |      >>> df1.to_excel('output1.xlsx', engine='xlsxwriter')  # doctest: +SKIP\n",
      " |  \n",
      " |  to_hdf(self, path_or_buf, key, **kwargs)\n",
      " |      Write the contained data to an HDF5 file using HDFStore.\n",
      " |      \n",
      " |      Hierarchical Data Format (HDF) is self-describing, allowing an\n",
      " |      application to interpret the structure and contents of a file with\n",
      " |      no outside information. One HDF file can hold a mix of related objects\n",
      " |      which can be accessed as a group or as individual objects.\n",
      " |      \n",
      " |      In order to add another DataFrame or Series to an existing HDF file\n",
      " |      please use append mode and a different a key.\n",
      " |      \n",
      " |      For more information see the :ref:`user guide <io.hdf5>`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path_or_buf : str or pandas.HDFStore\n",
      " |          File path or HDFStore object.\n",
      " |      key : str\n",
      " |          Identifier for the group in the store.\n",
      " |      mode : {'a', 'w', 'r+'}, default 'a'\n",
      " |          Mode to open file:\n",
      " |      \n",
      " |          - 'w': write, a new file is created (an existing file with\n",
      " |            the same name would be deleted).\n",
      " |          - 'a': append, an existing file is opened for reading and\n",
      " |            writing, and if the file does not exist it is created.\n",
      " |          - 'r+': similar to 'a', but the file must already exist.\n",
      " |      format : {'fixed', 'table'}, default 'fixed'\n",
      " |          Possible values:\n",
      " |      \n",
      " |          - 'fixed': Fixed format. Fast writing/reading. Not-appendable,\n",
      " |            nor searchable.\n",
      " |          - 'table': Table format. Write as a PyTables Table structure\n",
      " |            which may perform worse but allow more flexible operations\n",
      " |            like searching / selecting subsets of the data.\n",
      " |      append : bool, default False\n",
      " |          For Table formats, append the input data to the existing.\n",
      " |      data_columns :  list of columns or True, optional\n",
      " |          List of columns to create as indexed data columns for on-disk\n",
      " |          queries, or True to use all columns. By default only the axes\n",
      " |          of the object are indexed. See :ref:`io.hdf5-query-data-columns`.\n",
      " |          Applicable only to format='table'.\n",
      " |      complevel : {0-9}, optional\n",
      " |          Specifies a compression level for data.\n",
      " |          A value of 0 disables compression.\n",
      " |      complib : {'zlib', 'lzo', 'bzip2', 'blosc'}, default 'zlib'\n",
      " |          Specifies the compression library to be used.\n",
      " |          As of v0.20.2 these additional compressors for Blosc are supported\n",
      " |          (default if no compressor specified: 'blosc:blosclz'):\n",
      " |          {'blosc:blosclz', 'blosc:lz4', 'blosc:lz4hc', 'blosc:snappy',\n",
      " |          'blosc:zlib', 'blosc:zstd'}.\n",
      " |          Specifying a compression library which is not available issues\n",
      " |          a ValueError.\n",
      " |      fletcher32 : bool, default False\n",
      " |          If applying compression use the fletcher32 checksum.\n",
      " |      dropna : bool, default False\n",
      " |          If true, ALL nan rows will not be written to store.\n",
      " |      errors : str, default 'strict'\n",
      " |          Specifies how encoding and decoding errors are to be handled.\n",
      " |          See the errors argument for :func:`open` for a full list\n",
      " |          of options.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.read_hdf : Read from HDF file.\n",
      " |      DataFrame.to_parquet : Write a DataFrame to the binary parquet format.\n",
      " |      DataFrame.to_sql : Write to a sql table.\n",
      " |      DataFrame.to_feather : Write out feather-format for DataFrames.\n",
      " |      DataFrame.to_csv : Write out to a csv file.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'A': [1, 2, 3], 'B': [4, 5, 6]},\n",
      " |      ...                   index=['a', 'b', 'c'])\n",
      " |      >>> df.to_hdf('data.h5', key='df', mode='w')\n",
      " |      \n",
      " |      We can add another object to the same file:\n",
      " |      \n",
      " |      >>> s = pd.Series([1, 2, 3, 4])\n",
      " |      >>> s.to_hdf('data.h5', key='s')\n",
      " |      \n",
      " |      Reading from HDF file:\n",
      " |      \n",
      " |      >>> pd.read_hdf('data.h5', 'df')\n",
      " |      A  B\n",
      " |      a  1  4\n",
      " |      b  2  5\n",
      " |      c  3  6\n",
      " |      >>> pd.read_hdf('data.h5', 's')\n",
      " |      0    1\n",
      " |      1    2\n",
      " |      2    3\n",
      " |      3    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Deleting file with data:\n",
      " |      \n",
      " |      >>> import os\n",
      " |      >>> os.remove('data.h5')\n",
      " |  \n",
      " |  to_json(self, path_or_buf=None, orient=None, date_format=None, double_precision=10, force_ascii=True, date_unit='ms', default_handler=None, lines=False, compression='infer', index=True)\n",
      " |      Convert the object to a JSON string.\n",
      " |      \n",
      " |      Note NaN's and None will be converted to null and datetime objects\n",
      " |      will be converted to UNIX timestamps.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path_or_buf : string or file handle, optional\n",
      " |          File path or object. If not specified, the result is returned as\n",
      " |          a string.\n",
      " |      orient : string\n",
      " |          Indication of expected JSON string format.\n",
      " |      \n",
      " |          * Series\n",
      " |      \n",
      " |            - default is 'index'\n",
      " |            - allowed values are: {'split','records','index','table'}\n",
      " |      \n",
      " |          * DataFrame\n",
      " |      \n",
      " |            - default is 'columns'\n",
      " |            - allowed values are:\n",
      " |              {'split','records','index','columns','values','table'}\n",
      " |      \n",
      " |          * The format of the JSON string\n",
      " |      \n",
      " |            - 'split' : dict like {'index' -> [index],\n",
      " |              'columns' -> [columns], 'data' -> [values]}\n",
      " |            - 'records' : list like\n",
      " |              [{column -> value}, ... , {column -> value}]\n",
      " |            - 'index' : dict like {index -> {column -> value}}\n",
      " |            - 'columns' : dict like {column -> {index -> value}}\n",
      " |            - 'values' : just the values array\n",
      " |            - 'table' : dict like {'schema': {schema}, 'data': {data}}\n",
      " |              describing the data, and the data component is\n",
      " |              like ``orient='records'``.\n",
      " |      \n",
      " |              .. versionchanged:: 0.20.0\n",
      " |      \n",
      " |      date_format : {None, 'epoch', 'iso'}\n",
      " |          Type of date conversion. 'epoch' = epoch milliseconds,\n",
      " |          'iso' = ISO8601. The default depends on the `orient`. For\n",
      " |          ``orient='table'``, the default is 'iso'. For all other orients,\n",
      " |          the default is 'epoch'.\n",
      " |      double_precision : int, default 10\n",
      " |          The number of decimal places to use when encoding\n",
      " |          floating point values.\n",
      " |      force_ascii : bool, default True\n",
      " |          Force encoded string to be ASCII.\n",
      " |      date_unit : string, default 'ms' (milliseconds)\n",
      " |          The time unit to encode to, governs timestamp and ISO8601\n",
      " |          precision.  One of 's', 'ms', 'us', 'ns' for second, millisecond,\n",
      " |          microsecond, and nanosecond respectively.\n",
      " |      default_handler : callable, default None\n",
      " |          Handler to call if object cannot otherwise be converted to a\n",
      " |          suitable format for JSON. Should receive a single argument which is\n",
      " |          the object to convert and return a serialisable object.\n",
      " |      lines : bool, default False\n",
      " |          If 'orient' is 'records' write out line delimited json format. Will\n",
      " |          throw ValueError if incorrect 'orient' since others are not list\n",
      " |          like.\n",
      " |      \n",
      " |          .. versionadded:: 0.19.0\n",
      " |      \n",
      " |      compression : {'infer', 'gzip', 'bz2', 'zip', 'xz', None}\n",
      " |      \n",
      " |          A string representing the compression to use in the output file,\n",
      " |          only used when the first argument is a filename. By default, the\n",
      " |          compression is inferred from the filename.\n",
      " |      \n",
      " |          .. versionadded:: 0.21.0\n",
      " |          .. versionchanged:: 0.24.0\n",
      " |             'infer' option added and set to default\n",
      " |      index : bool, default True\n",
      " |          Whether to include the index values in the JSON string. Not\n",
      " |          including the index (``index=False``) is only supported when\n",
      " |          orient is 'split' or 'table'.\n",
      " |      \n",
      " |          .. versionadded:: 0.23.0\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      read_json\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([['a', 'b'], ['c', 'd']],\n",
      " |      ...                   index=['row 1', 'row 2'],\n",
      " |      ...                   columns=['col 1', 'col 2'])\n",
      " |      >>> df.to_json(orient='split')\n",
      " |      '{\"columns\":[\"col 1\",\"col 2\"],\n",
      " |        \"index\":[\"row 1\",\"row 2\"],\n",
      " |        \"data\":[[\"a\",\"b\"],[\"c\",\"d\"]]}'\n",
      " |      \n",
      " |      Encoding/decoding a Dataframe using ``'records'`` formatted JSON.\n",
      " |      Note that index labels are not preserved with this encoding.\n",
      " |      \n",
      " |      >>> df.to_json(orient='records')\n",
      " |      '[{\"col 1\":\"a\",\"col 2\":\"b\"},{\"col 1\":\"c\",\"col 2\":\"d\"}]'\n",
      " |      \n",
      " |      Encoding/decoding a Dataframe using ``'index'`` formatted JSON:\n",
      " |      \n",
      " |      >>> df.to_json(orient='index')\n",
      " |      '{\"row 1\":{\"col 1\":\"a\",\"col 2\":\"b\"},\"row 2\":{\"col 1\":\"c\",\"col 2\":\"d\"}}'\n",
      " |      \n",
      " |      Encoding/decoding a Dataframe using ``'columns'`` formatted JSON:\n",
      " |      \n",
      " |      >>> df.to_json(orient='columns')\n",
      " |      '{\"col 1\":{\"row 1\":\"a\",\"row 2\":\"c\"},\"col 2\":{\"row 1\":\"b\",\"row 2\":\"d\"}}'\n",
      " |      \n",
      " |      Encoding/decoding a Dataframe using ``'values'`` formatted JSON:\n",
      " |      \n",
      " |      >>> df.to_json(orient='values')\n",
      " |      '[[\"a\",\"b\"],[\"c\",\"d\"]]'\n",
      " |      \n",
      " |      Encoding with Table Schema\n",
      " |      \n",
      " |      >>> df.to_json(orient='table')\n",
      " |      '{\"schema\": {\"fields\": [{\"name\": \"index\", \"type\": \"string\"},\n",
      " |                              {\"name\": \"col 1\", \"type\": \"string\"},\n",
      " |                              {\"name\": \"col 2\", \"type\": \"string\"}],\n",
      " |                   \"primaryKey\": \"index\",\n",
      " |                   \"pandas_version\": \"0.20.0\"},\n",
      " |        \"data\": [{\"index\": \"row 1\", \"col 1\": \"a\", \"col 2\": \"b\"},\n",
      " |                 {\"index\": \"row 2\", \"col 1\": \"c\", \"col 2\": \"d\"}]}'\n",
      " |  \n",
      " |  to_latex(self, buf=None, columns=None, col_space=None, header=True, index=True, na_rep='NaN', formatters=None, float_format=None, sparsify=None, index_names=True, bold_rows=False, column_format=None, longtable=None, escape=None, encoding=None, decimal='.', multicolumn=None, multicolumn_format=None, multirow=None)\n",
      " |      Render an object to a LaTeX tabular environment table.\n",
      " |      \n",
      " |      Render an object to a tabular environment table. You can splice\n",
      " |      this into a LaTeX document. Requires \\usepackage{booktabs}.\n",
      " |      \n",
      " |      .. versionchanged:: 0.20.2\n",
      " |         Added to Series\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      buf : file descriptor or None\n",
      " |          Buffer to write to. If None, the output is returned as a string.\n",
      " |      columns : list of label, optional\n",
      " |          The subset of columns to write. Writes all columns by default.\n",
      " |      col_space : int, optional\n",
      " |          The minimum width of each column.\n",
      " |      header : bool or list of str, default True\n",
      " |          Write out the column names. If a list of strings is given,\n",
      " |          it is assumed to be aliases for the column names.\n",
      " |      index : bool, default True\n",
      " |          Write row names (index).\n",
      " |      na_rep : str, default 'NaN'\n",
      " |          Missing data representation.\n",
      " |      formatters : list of functions or dict of {str: function}, optional\n",
      " |          Formatter functions to apply to columns' elements by position or\n",
      " |          name. The result of each function must be a unicode string.\n",
      " |          List must be of length equal to the number of columns.\n",
      " |      float_format : str, optional\n",
      " |          Format string for floating point numbers.\n",
      " |      sparsify : bool, optional\n",
      " |          Set to False for a DataFrame with a hierarchical index to print\n",
      " |          every multiindex key at each row. By default, the value will be\n",
      " |          read from the config module.\n",
      " |      index_names : bool, default True\n",
      " |          Prints the names of the indexes.\n",
      " |      bold_rows : bool, default False\n",
      " |          Make the row labels bold in the output.\n",
      " |      column_format : str, optional\n",
      " |          The columns format as specified in `LaTeX table format\n",
      " |          <https://en.wikibooks.org/wiki/LaTeX/Tables>`__ e.g. 'rcl' for 3\n",
      " |          columns. By default, 'l' will be used for all columns except\n",
      " |          columns of numbers, which default to 'r'.\n",
      " |      longtable : bool, optional\n",
      " |          By default, the value will be read from the pandas config\n",
      " |          module. Use a longtable environment instead of tabular. Requires\n",
      " |          adding a \\usepackage{longtable} to your LaTeX preamble.\n",
      " |      escape : bool, optional\n",
      " |          By default, the value will be read from the pandas config\n",
      " |          module. When set to False prevents from escaping latex special\n",
      " |          characters in column names.\n",
      " |      encoding : str, optional\n",
      " |          A string representing the encoding to use in the output file,\n",
      " |          defaults to 'ascii' on Python 2 and 'utf-8' on Python 3.\n",
      " |      decimal : str, default '.'\n",
      " |          Character recognized as decimal separator, e.g. ',' in Europe.\n",
      " |          .. versionadded:: 0.18.0\n",
      " |      multicolumn : bool, default True\n",
      " |          Use \\multicolumn to enhance MultiIndex columns.\n",
      " |          The default will be read from the config module.\n",
      " |          .. versionadded:: 0.20.0\n",
      " |      multicolumn_format : str, default 'l'\n",
      " |          The alignment for multicolumns, similar to `column_format`\n",
      " |          The default will be read from the config module.\n",
      " |          .. versionadded:: 0.20.0\n",
      " |      multirow : bool, default False\n",
      " |          Use \\multirow to enhance MultiIndex rows. Requires adding a\n",
      " |          \\usepackage{multirow} to your LaTeX preamble. Will print\n",
      " |          centered labels (instead of top-aligned) across the contained\n",
      " |          rows, separating groups via clines. The default will be read\n",
      " |          from the pandas config module.\n",
      " |          .. versionadded:: 0.20.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      str or None\n",
      " |          If buf is None, returns the resulting LateX format as a\n",
      " |          string. Otherwise returns None.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.to_string : Render a DataFrame to a console-friendly\n",
      " |          tabular output.\n",
      " |      DataFrame.to_html : Render a DataFrame as an HTML table.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'name': ['Raphael', 'Donatello'],\n",
      " |      ...                    'mask': ['red', 'purple'],\n",
      " |      ...                    'weapon': ['sai', 'bo staff']})\n",
      " |      >>> df.to_latex(index=False) # doctest: +NORMALIZE_WHITESPACE\n",
      " |      '\\\\begin{tabular}{lll}\\n\\\\toprule\\n      name &    mask &    weapon\n",
      " |      \\\\\\\\\\n\\\\midrule\\n   Raphael &     red &       sai \\\\\\\\\\n Donatello &\n",
      " |       purple &  bo staff \\\\\\\\\\n\\\\bottomrule\\n\\\\end{tabular}\\n'\n",
      " |  \n",
      " |  to_msgpack(self, path_or_buf=None, encoding='utf-8', **kwargs)\n",
      " |      Serialize object to input file path using msgpack format.\n",
      " |      \n",
      " |      THIS IS AN EXPERIMENTAL LIBRARY and the storage format\n",
      " |      may not be stable until a future release.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path : string File path, buffer-like, or None\n",
      " |          if None, return generated string\n",
      " |      append : bool whether to append to an existing msgpack\n",
      " |          (default is False)\n",
      " |      compress : type of compressor (zlib or blosc), default to None (no\n",
      " |          compression)\n",
      " |  \n",
      " |  to_pickle(self, path, compression='infer', protocol=4)\n",
      " |      Pickle (serialize) object to file.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      path : str\n",
      " |          File path where the pickled object will be stored.\n",
      " |      compression : {'infer', 'gzip', 'bz2', 'zip', 'xz', None},         default 'infer'\n",
      " |          A string representing the compression to use in the output file. By\n",
      " |          default, infers from the file extension in specified path.\n",
      " |      \n",
      " |          .. versionadded:: 0.20.0\n",
      " |      protocol : int\n",
      " |          Int which indicates which protocol should be used by the pickler,\n",
      " |          default HIGHEST_PROTOCOL (see [1]_ paragraph 12.1.2). The possible\n",
      " |          values for this parameter depend on the version of Python. For\n",
      " |          Python 2.x, possible values are 0, 1, 2. For Python>=3.0, 3 is a\n",
      " |          valid value. For Python >= 3.4, 4 is a valid value. A negative\n",
      " |          value for the protocol parameter is equivalent to setting its value\n",
      " |          to HIGHEST_PROTOCOL.\n",
      " |      \n",
      " |          .. [1] https://docs.python.org/3/library/pickle.html\n",
      " |          .. versionadded:: 0.21.0\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      read_pickle : Load pickled pandas object (or any object) from file.\n",
      " |      DataFrame.to_hdf : Write DataFrame to an HDF5 file.\n",
      " |      DataFrame.to_sql : Write DataFrame to a SQL database.\n",
      " |      DataFrame.to_parquet : Write a DataFrame to the binary parquet format.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> original_df = pd.DataFrame({\"foo\": range(5), \"bar\": range(5, 10)})\n",
      " |      >>> original_df\n",
      " |         foo  bar\n",
      " |      0    0    5\n",
      " |      1    1    6\n",
      " |      2    2    7\n",
      " |      3    3    8\n",
      " |      4    4    9\n",
      " |      >>> original_df.to_pickle(\"./dummy.pkl\")\n",
      " |      \n",
      " |      >>> unpickled_df = pd.read_pickle(\"./dummy.pkl\")\n",
      " |      >>> unpickled_df\n",
      " |         foo  bar\n",
      " |      0    0    5\n",
      " |      1    1    6\n",
      " |      2    2    7\n",
      " |      3    3    8\n",
      " |      4    4    9\n",
      " |      \n",
      " |      >>> import os\n",
      " |      >>> os.remove(\"./dummy.pkl\")\n",
      " |  \n",
      " |  to_sql(self, name, con, schema=None, if_exists='fail', index=True, index_label=None, chunksize=None, dtype=None, method=None)\n",
      " |      Write records stored in a DataFrame to a SQL database.\n",
      " |      \n",
      " |      Databases supported by SQLAlchemy [1]_ are supported. Tables can be\n",
      " |      newly created, appended to, or overwritten.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      name : string\n",
      " |          Name of SQL table.\n",
      " |      con : sqlalchemy.engine.Engine or sqlite3.Connection\n",
      " |          Using SQLAlchemy makes it possible to use any DB supported by that\n",
      " |          library. Legacy support is provided for sqlite3.Connection objects.\n",
      " |      schema : string, optional\n",
      " |          Specify the schema (if database flavor supports this). If None, use\n",
      " |          default schema.\n",
      " |      if_exists : {'fail', 'replace', 'append'}, default 'fail'\n",
      " |          How to behave if the table already exists.\n",
      " |      \n",
      " |          * fail: Raise a ValueError.\n",
      " |          * replace: Drop the table before inserting new values.\n",
      " |          * append: Insert new values to the existing table.\n",
      " |      \n",
      " |      index : bool, default True\n",
      " |          Write DataFrame index as a column. Uses `index_label` as the column\n",
      " |          name in the table.\n",
      " |      index_label : string or sequence, default None\n",
      " |          Column label for index column(s). If None is given (default) and\n",
      " |          `index` is True, then the index names are used.\n",
      " |          A sequence should be given if the DataFrame uses MultiIndex.\n",
      " |      chunksize : int, optional\n",
      " |          Rows will be written in batches of this size at a time. By default,\n",
      " |          all rows will be written at once.\n",
      " |      dtype : dict, optional\n",
      " |          Specifying the datatype for columns. The keys should be the column\n",
      " |          names and the values should be the SQLAlchemy types or strings for\n",
      " |          the sqlite3 legacy mode.\n",
      " |      method : {None, 'multi', callable}, default None\n",
      " |          Controls the SQL insertion clause used:\n",
      " |      \n",
      " |          * None : Uses standard SQL ``INSERT`` clause (one per row).\n",
      " |          * 'multi': Pass multiple values in a single ``INSERT`` clause.\n",
      " |          * callable with signature ``(pd_table, conn, keys, data_iter)``.\n",
      " |      \n",
      " |          Details and a sample callable implementation can be found in the\n",
      " |          section :ref:`insert method <io.sql.method>`.\n",
      " |      \n",
      " |          .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      ValueError\n",
      " |          When the table already exists and `if_exists` is 'fail' (the\n",
      " |          default).\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      read_sql : Read a DataFrame from a table.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      Timezone aware datetime columns will be written as\n",
      " |      ``Timestamp with timezone`` type with SQLAlchemy if supported by the\n",
      " |      database. Otherwise, the datetimes will be stored as timezone unaware\n",
      " |      timestamps local to the original timezone.\n",
      " |      \n",
      " |      .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      References\n",
      " |      ----------\n",
      " |      .. [1] http://docs.sqlalchemy.org\n",
      " |      .. [2] https://www.python.org/dev/peps/pep-0249/\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Create an in-memory SQLite database.\n",
      " |      \n",
      " |      >>> from sqlalchemy import create_engine\n",
      " |      >>> engine = create_engine('sqlite://', echo=False)\n",
      " |      \n",
      " |      Create a table from scratch with 3 rows.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({'name' : ['User 1', 'User 2', 'User 3']})\n",
      " |      >>> df\n",
      " |           name\n",
      " |      0  User 1\n",
      " |      1  User 2\n",
      " |      2  User 3\n",
      " |      \n",
      " |      >>> df.to_sql('users', con=engine)\n",
      " |      >>> engine.execute(\"SELECT * FROM users\").fetchall()\n",
      " |      [(0, 'User 1'), (1, 'User 2'), (2, 'User 3')]\n",
      " |      \n",
      " |      >>> df1 = pd.DataFrame({'name' : ['User 4', 'User 5']})\n",
      " |      >>> df1.to_sql('users', con=engine, if_exists='append')\n",
      " |      >>> engine.execute(\"SELECT * FROM users\").fetchall()\n",
      " |      [(0, 'User 1'), (1, 'User 2'), (2, 'User 3'),\n",
      " |       (0, 'User 4'), (1, 'User 5')]\n",
      " |      \n",
      " |      Overwrite the table with just ``df1``.\n",
      " |      \n",
      " |      >>> df1.to_sql('users', con=engine, if_exists='replace',\n",
      " |      ...            index_label='id')\n",
      " |      >>> engine.execute(\"SELECT * FROM users\").fetchall()\n",
      " |      [(0, 'User 4'), (1, 'User 5')]\n",
      " |      \n",
      " |      Specify the dtype (especially useful for integers with missing values).\n",
      " |      Notice that while pandas is forced to store the data as floating point,\n",
      " |      the database supports nullable integers. When fetching the data with\n",
      " |      Python, we get back integer scalars.\n",
      " |      \n",
      " |      >>> df = pd.DataFrame({\"A\": [1, None, 2]})\n",
      " |      >>> df\n",
      " |           A\n",
      " |      0  1.0\n",
      " |      1  NaN\n",
      " |      2  2.0\n",
      " |      \n",
      " |      >>> from sqlalchemy.types import Integer\n",
      " |      >>> df.to_sql('integers', con=engine, index=False,\n",
      " |      ...           dtype={\"A\": Integer()})\n",
      " |      \n",
      " |      >>> engine.execute(\"SELECT * FROM integers\").fetchall()\n",
      " |      [(1,), (None,), (2,)]\n",
      " |  \n",
      " |  to_xarray(self)\n",
      " |      Return an xarray object from the pandas object.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      xarray.DataArray or xarray.Dataset\n",
      " |          Data in the pandas structure converted to Dataset if the object is\n",
      " |          a DataFrame, or a DataArray if the object is a Series.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.to_hdf : Write DataFrame to an HDF5 file.\n",
      " |      DataFrame.to_parquet : Write a DataFrame to the binary parquet format.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      See the `xarray docs <http://xarray.pydata.org/en/stable/>`__\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([('falcon', 'bird',  389.0, 2),\n",
      " |      ...                    ('parrot', 'bird', 24.0, 2),\n",
      " |      ...                    ('lion',   'mammal', 80.5, 4),\n",
      " |      ...                    ('monkey', 'mammal', np.nan, 4)],\n",
      " |      ...                    columns=['name', 'class', 'max_speed',\n",
      " |      ...                             'num_legs'])\n",
      " |      >>> df\n",
      " |           name   class  max_speed  num_legs\n",
      " |      0  falcon    bird      389.0         2\n",
      " |      1  parrot    bird       24.0         2\n",
      " |      2    lion  mammal       80.5         4\n",
      " |      3  monkey  mammal        NaN         4\n",
      " |      \n",
      " |      >>> df.to_xarray()\n",
      " |      <xarray.Dataset>\n",
      " |      Dimensions:    (index: 4)\n",
      " |      Coordinates:\n",
      " |        * index      (index) int64 0 1 2 3\n",
      " |      Data variables:\n",
      " |          name       (index) object 'falcon' 'parrot' 'lion' 'monkey'\n",
      " |          class      (index) object 'bird' 'bird' 'mammal' 'mammal'\n",
      " |          max_speed  (index) float64 389.0 24.0 80.5 nan\n",
      " |          num_legs   (index) int64 2 2 4 4\n",
      " |      \n",
      " |      >>> df['max_speed'].to_xarray()\n",
      " |      <xarray.DataArray 'max_speed' (index: 4)>\n",
      " |      array([389. ,  24. ,  80.5,   nan])\n",
      " |      Coordinates:\n",
      " |        * index    (index) int64 0 1 2 3\n",
      " |      \n",
      " |      >>> dates = pd.to_datetime(['2018-01-01', '2018-01-01',\n",
      " |      ...                         '2018-01-02', '2018-01-02'])\n",
      " |      >>> df_multiindex = pd.DataFrame({'date': dates,\n",
      " |      ...                    'animal': ['falcon', 'parrot', 'falcon',\n",
      " |      ...                               'parrot'],\n",
      " |      ...                    'speed': [350, 18, 361, 15]}).set_index(['date',\n",
      " |      ...                                                    'animal'])\n",
      " |      >>> df_multiindex\n",
      " |                         speed\n",
      " |      date       animal\n",
      " |      2018-01-01 falcon    350\n",
      " |                 parrot     18\n",
      " |      2018-01-02 falcon    361\n",
      " |                 parrot     15\n",
      " |      \n",
      " |      >>> df_multiindex.to_xarray()\n",
      " |      <xarray.Dataset>\n",
      " |      Dimensions:  (animal: 2, date: 2)\n",
      " |      Coordinates:\n",
      " |        * date     (date) datetime64[ns] 2018-01-01 2018-01-02\n",
      " |        * animal   (animal) object 'falcon' 'parrot'\n",
      " |      Data variables:\n",
      " |          speed    (date, animal) int64 350 18 361 15\n",
      " |  \n",
      " |  truncate(self, before=None, after=None, axis=None, copy=True)\n",
      " |      Truncate a Series or DataFrame before and after some index value.\n",
      " |      \n",
      " |      This is a useful shorthand for boolean indexing based on index\n",
      " |      values above or below certain thresholds.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      before : date, string, int\n",
      " |          Truncate all rows before this index value.\n",
      " |      after : date, string, int\n",
      " |          Truncate all rows after this index value.\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, optional\n",
      " |          Axis to truncate. Truncates the index (rows) by default.\n",
      " |      copy : boolean, default is True,\n",
      " |          Return a copy of the truncated section.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      type of caller\n",
      " |          The truncated Series or DataFrame.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.loc : Select a subset of a DataFrame by label.\n",
      " |      DataFrame.iloc : Select a subset of a DataFrame by position.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      If the index being truncated contains only datetime values,\n",
      " |      `before` and `after` may be specified as strings instead of\n",
      " |      Timestamps.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame({'A': ['a', 'b', 'c', 'd', 'e'],\n",
      " |      ...                    'B': ['f', 'g', 'h', 'i', 'j'],\n",
      " |      ...                    'C': ['k', 'l', 'm', 'n', 'o']},\n",
      " |      ...                    index=[1, 2, 3, 4, 5])\n",
      " |      >>> df\n",
      " |         A  B  C\n",
      " |      1  a  f  k\n",
      " |      2  b  g  l\n",
      " |      3  c  h  m\n",
      " |      4  d  i  n\n",
      " |      5  e  j  o\n",
      " |      \n",
      " |      >>> df.truncate(before=2, after=4)\n",
      " |         A  B  C\n",
      " |      2  b  g  l\n",
      " |      3  c  h  m\n",
      " |      4  d  i  n\n",
      " |      \n",
      " |      The columns of a DataFrame can be truncated.\n",
      " |      \n",
      " |      >>> df.truncate(before=\"A\", after=\"B\", axis=\"columns\")\n",
      " |         A  B\n",
      " |      1  a  f\n",
      " |      2  b  g\n",
      " |      3  c  h\n",
      " |      4  d  i\n",
      " |      5  e  j\n",
      " |      \n",
      " |      For Series, only rows can be truncated.\n",
      " |      \n",
      " |      >>> df['A'].truncate(before=2, after=4)\n",
      " |      2    b\n",
      " |      3    c\n",
      " |      4    d\n",
      " |      Name: A, dtype: object\n",
      " |      \n",
      " |      The index values in ``truncate`` can be datetimes or string\n",
      " |      dates.\n",
      " |      \n",
      " |      >>> dates = pd.date_range('2016-01-01', '2016-02-01', freq='s')\n",
      " |      >>> df = pd.DataFrame(index=dates, data={'A': 1})\n",
      " |      >>> df.tail()\n",
      " |                           A\n",
      " |      2016-01-31 23:59:56  1\n",
      " |      2016-01-31 23:59:57  1\n",
      " |      2016-01-31 23:59:58  1\n",
      " |      2016-01-31 23:59:59  1\n",
      " |      2016-02-01 00:00:00  1\n",
      " |      \n",
      " |      >>> df.truncate(before=pd.Timestamp('2016-01-05'),\n",
      " |      ...             after=pd.Timestamp('2016-01-10')).tail()\n",
      " |                           A\n",
      " |      2016-01-09 23:59:56  1\n",
      " |      2016-01-09 23:59:57  1\n",
      " |      2016-01-09 23:59:58  1\n",
      " |      2016-01-09 23:59:59  1\n",
      " |      2016-01-10 00:00:00  1\n",
      " |      \n",
      " |      Because the index is a DatetimeIndex containing only dates, we can\n",
      " |      specify `before` and `after` as strings. They will be coerced to\n",
      " |      Timestamps before truncation.\n",
      " |      \n",
      " |      >>> df.truncate('2016-01-05', '2016-01-10').tail()\n",
      " |                           A\n",
      " |      2016-01-09 23:59:56  1\n",
      " |      2016-01-09 23:59:57  1\n",
      " |      2016-01-09 23:59:58  1\n",
      " |      2016-01-09 23:59:59  1\n",
      " |      2016-01-10 00:00:00  1\n",
      " |      \n",
      " |      Note that ``truncate`` assumes a 0 value for any unspecified time\n",
      " |      component (midnight). This differs from partial string slicing, which\n",
      " |      returns any partially matching dates.\n",
      " |      \n",
      " |      >>> df.loc['2016-01-05':'2016-01-10', :].tail()\n",
      " |                           A\n",
      " |      2016-01-10 23:59:55  1\n",
      " |      2016-01-10 23:59:56  1\n",
      " |      2016-01-10 23:59:57  1\n",
      " |      2016-01-10 23:59:58  1\n",
      " |      2016-01-10 23:59:59  1\n",
      " |  \n",
      " |  tshift(self, periods=1, freq=None, axis=0)\n",
      " |      Shift the time index, using the index's frequency if available.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      periods : int\n",
      " |          Number of periods to move, can be positive or negative\n",
      " |      freq : DateOffset, timedelta, or time rule string, default None\n",
      " |          Increment to use from the tseries module or time rule (e.g. 'EOM')\n",
      " |      axis : int or basestring\n",
      " |          Corresponds to the axis that contains the Index\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      shifted : NDFrame\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      If freq is not specified then tries to use the freq or inferred_freq\n",
      " |      attributes of the index. If neither of those attributes exist, a\n",
      " |      ValueError is thrown\n",
      " |  \n",
      " |  tz_convert(self, tz, axis=0, level=None, copy=True)\n",
      " |      Convert tz-aware axis to target time zone.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      tz : string or pytz.timezone object\n",
      " |      axis : the axis to convert\n",
      " |      level : int, str, default None\n",
      " |          If axis ia a MultiIndex, convert a specific level. Otherwise\n",
      " |          must be None\n",
      " |      copy : boolean, default True\n",
      " |          Also make a copy of the underlying data\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the axis is tz-naive.\n",
      " |  \n",
      " |  tz_localize(self, tz, axis=0, level=None, copy=True, ambiguous='raise', nonexistent='raise')\n",
      " |      Localize tz-naive index of a Series or DataFrame to target time zone.\n",
      " |      \n",
      " |      This operation localizes the Index. To localize the values in a\n",
      " |      timezone-naive Series, use :meth:`Series.dt.tz_localize`.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      tz : string or pytz.timezone object\n",
      " |      axis : the axis to localize\n",
      " |      level : int, str, default None\n",
      " |          If axis ia a MultiIndex, localize a specific level. Otherwise\n",
      " |          must be None\n",
      " |      copy : boolean, default True\n",
      " |          Also make a copy of the underlying data\n",
      " |      ambiguous : 'infer', bool-ndarray, 'NaT', default 'raise'\n",
      " |          When clocks moved backward due to DST, ambiguous times may arise.\n",
      " |          For example in Central European Time (UTC+01), when going from\n",
      " |          03:00 DST to 02:00 non-DST, 02:30:00 local time occurs both at\n",
      " |          00:30:00 UTC and at 01:30:00 UTC. In such a situation, the\n",
      " |          `ambiguous` parameter dictates how ambiguous times should be\n",
      " |          handled.\n",
      " |      \n",
      " |          - 'infer' will attempt to infer fall dst-transition hours based on\n",
      " |            order\n",
      " |          - bool-ndarray where True signifies a DST time, False designates\n",
      " |            a non-DST time (note that this flag is only applicable for\n",
      " |            ambiguous times)\n",
      " |          - 'NaT' will return NaT where there are ambiguous times\n",
      " |          - 'raise' will raise an AmbiguousTimeError if there are ambiguous\n",
      " |            times\n",
      " |      nonexistent : str, default 'raise'\n",
      " |          A nonexistent time does not exist in a particular timezone\n",
      " |          where clocks moved forward due to DST. Valid valuse are:\n",
      " |      \n",
      " |          - 'shift_forward' will shift the nonexistent time forward to the\n",
      " |            closest existing time\n",
      " |          - 'shift_backward' will shift the nonexistent time backward to the\n",
      " |            closest existing time\n",
      " |          - 'NaT' will return NaT where there are nonexistent times\n",
      " |          - timedelta objects will shift nonexistent times by the timedelta\n",
      " |          - 'raise' will raise an NonExistentTimeError if there are\n",
      " |            nonexistent times\n",
      " |      \n",
      " |          .. versionadded:: 0.24.0\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Same type as the input.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      TypeError\n",
      " |          If the TimeSeries is tz-aware and tz is not None.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      Localize local times:\n",
      " |      \n",
      " |      >>> s = pd.Series([1],\n",
      " |      ... index=pd.DatetimeIndex(['2018-09-15 01:30:00']))\n",
      " |      >>> s.tz_localize('CET')\n",
      " |      2018-09-15 01:30:00+02:00    1\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      Be careful with DST changes. When there is sequential data, pandas\n",
      " |      can infer the DST time:\n",
      " |      \n",
      " |      >>> s = pd.Series(range(7), index=pd.DatetimeIndex([\n",
      " |      ... '2018-10-28 01:30:00',\n",
      " |      ... '2018-10-28 02:00:00',\n",
      " |      ... '2018-10-28 02:30:00',\n",
      " |      ... '2018-10-28 02:00:00',\n",
      " |      ... '2018-10-28 02:30:00',\n",
      " |      ... '2018-10-28 03:00:00',\n",
      " |      ... '2018-10-28 03:30:00']))\n",
      " |      >>> s.tz_localize('CET', ambiguous='infer')\n",
      " |      2018-10-28 01:30:00+02:00    0\n",
      " |      2018-10-28 02:00:00+02:00    1\n",
      " |      2018-10-28 02:30:00+02:00    2\n",
      " |      2018-10-28 02:00:00+01:00    3\n",
      " |      2018-10-28 02:30:00+01:00    4\n",
      " |      2018-10-28 03:00:00+01:00    5\n",
      " |      2018-10-28 03:30:00+01:00    6\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      In some cases, inferring the DST is impossible. In such cases, you can\n",
      " |      pass an ndarray to the ambiguous parameter to set the DST explicitly\n",
      " |      \n",
      " |      >>> s = pd.Series(range(3), index=pd.DatetimeIndex([\n",
      " |      ... '2018-10-28 01:20:00',\n",
      " |      ... '2018-10-28 02:36:00',\n",
      " |      ... '2018-10-28 03:46:00']))\n",
      " |      >>> s.tz_localize('CET', ambiguous=np.array([True, True, False]))\n",
      " |      2018-10-28 01:20:00+02:00    0\n",
      " |      2018-10-28 02:36:00+02:00    1\n",
      " |      2018-10-28 03:46:00+01:00    2\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      If the DST transition causes nonexistent times, you can shift these\n",
      " |      dates forward or backwards with a timedelta object or `'shift_forward'`\n",
      " |      or `'shift_backwards'`.\n",
      " |      >>> s = pd.Series(range(2), index=pd.DatetimeIndex([\n",
      " |      ... '2015-03-29 02:30:00',\n",
      " |      ... '2015-03-29 03:30:00']))\n",
      " |      >>> s.tz_localize('Europe/Warsaw', nonexistent='shift_forward')\n",
      " |      2015-03-29 03:00:00+02:00    0\n",
      " |      2015-03-29 03:30:00+02:00    1\n",
      " |      dtype: int64\n",
      " |      >>> s.tz_localize('Europe/Warsaw', nonexistent='shift_backward')\n",
      " |      2015-03-29 01:59:59.999999999+01:00    0\n",
      " |      2015-03-29 03:30:00+02:00              1\n",
      " |      dtype: int64\n",
      " |      >>> s.tz_localize('Europe/Warsaw', nonexistent=pd.Timedelta('1H'))\n",
      " |      2015-03-29 03:30:00+02:00    0\n",
      " |      2015-03-29 03:30:00+02:00    1\n",
      " |      dtype: int64\n",
      " |  \n",
      " |  where(self, cond, other=nan, inplace=False, axis=None, level=None, errors='raise', try_cast=False, raise_on_error=None)\n",
      " |      Replace values where the condition is False.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      cond : boolean NDFrame, array-like, or callable\n",
      " |          Where `cond` is True, keep the original value. Where\n",
      " |          False, replace with corresponding value from `other`.\n",
      " |          If `cond` is callable, it is computed on the NDFrame and\n",
      " |          should return boolean NDFrame or array. The callable must\n",
      " |          not change input NDFrame (though pandas doesn't check it).\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |              A callable can be used as cond.\n",
      " |      \n",
      " |      other : scalar, NDFrame, or callable\n",
      " |          Entries where `cond` is False are replaced with\n",
      " |          corresponding value from `other`.\n",
      " |          If other is callable, it is computed on the NDFrame and\n",
      " |          should return scalar or NDFrame. The callable must not\n",
      " |          change input NDFrame (though pandas doesn't check it).\n",
      " |      \n",
      " |          .. versionadded:: 0.18.1\n",
      " |              A callable can be used as other.\n",
      " |      \n",
      " |      inplace : boolean, default False\n",
      " |          Whether to perform the operation in place on the data.\n",
      " |      axis : int, default None\n",
      " |          Alignment axis if needed.\n",
      " |      level : int, default None\n",
      " |          Alignment level if needed.\n",
      " |      errors : str, {'raise', 'ignore'}, default `raise`\n",
      " |          Note that currently this parameter won't affect\n",
      " |          the results and will always coerce to a suitable dtype.\n",
      " |      \n",
      " |          - `raise` : allow exceptions to be raised.\n",
      " |          - `ignore` : suppress exceptions. On error return original object.\n",
      " |      \n",
      " |      try_cast : boolean, default False\n",
      " |          Try to cast the result back to the input type (if possible).\n",
      " |      raise_on_error : boolean, default True\n",
      " |          Whether to raise on invalid data types (e.g. trying to where on\n",
      " |          strings).\n",
      " |      \n",
      " |          .. deprecated:: 0.21.0\n",
      " |      \n",
      " |             Use `errors`.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      wh : same type as caller\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      :func:`DataFrame.mask` : Return an object of same shape as\n",
      " |          self.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      The where method is an application of the if-then idiom. For each\n",
      " |      element in the calling DataFrame, if ``cond`` is ``True`` the\n",
      " |      element is used; otherwise the corresponding element from the DataFrame\n",
      " |      ``other`` is used.\n",
      " |      \n",
      " |      The signature for :func:`DataFrame.where` differs from\n",
      " |      :func:`numpy.where`. Roughly ``df1.where(m, df2)`` is equivalent to\n",
      " |      ``np.where(m, df1, df2)``.\n",
      " |      \n",
      " |      For further details and examples see the ``where`` documentation in\n",
      " |      :ref:`indexing <indexing.where_mask>`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> s = pd.Series(range(5))\n",
      " |      >>> s.where(s > 0)\n",
      " |      0    NaN\n",
      " |      1    1.0\n",
      " |      2    2.0\n",
      " |      3    3.0\n",
      " |      4    4.0\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.mask(s > 0)\n",
      " |      0    0.0\n",
      " |      1    NaN\n",
      " |      2    NaN\n",
      " |      3    NaN\n",
      " |      4    NaN\n",
      " |      dtype: float64\n",
      " |      \n",
      " |      >>> s.where(s > 1, 10)\n",
      " |      0    10\n",
      " |      1    10\n",
      " |      2    2\n",
      " |      3    3\n",
      " |      4    4\n",
      " |      dtype: int64\n",
      " |      \n",
      " |      >>> df = pd.DataFrame(np.arange(10).reshape(-1, 2), columns=['A', 'B'])\n",
      " |      >>> m = df % 3 == 0\n",
      " |      >>> df.where(m, -df)\n",
      " |         A  B\n",
      " |      0  0 -1\n",
      " |      1 -2  3\n",
      " |      2 -4 -5\n",
      " |      3  6 -7\n",
      " |      4 -8  9\n",
      " |      >>> df.where(m, -df) == np.where(m, df, -df)\n",
      " |            A     B\n",
      " |      0  True  True\n",
      " |      1  True  True\n",
      " |      2  True  True\n",
      " |      3  True  True\n",
      " |      4  True  True\n",
      " |      >>> df.where(m, -df) == df.mask(~m, -df)\n",
      " |            A     B\n",
      " |      0  True  True\n",
      " |      1  True  True\n",
      " |      2  True  True\n",
      " |      3  True  True\n",
      " |      4  True  True\n",
      " |  \n",
      " |  xs(self, key, axis=0, level=None, drop_level=True)\n",
      " |      Return cross-section from the Series/DataFrame.\n",
      " |      \n",
      " |      This method takes a `key` argument to select data at a particular\n",
      " |      level of a MultiIndex.\n",
      " |      \n",
      " |      Parameters\n",
      " |      ----------\n",
      " |      key : label or tuple of label\n",
      " |          Label contained in the index, or partially in a MultiIndex.\n",
      " |      axis : {0 or 'index', 1 or 'columns'}, default 0\n",
      " |          Axis to retrieve cross-section on.\n",
      " |      level : object, defaults to first n levels (n=1 or len(key))\n",
      " |          In case of a key partially contained in a MultiIndex, indicate\n",
      " |          which levels are used. Levels can be referred by label or position.\n",
      " |      drop_level : bool, default True\n",
      " |          If False, returns object with same levels as self.\n",
      " |      \n",
      " |      Returns\n",
      " |      -------\n",
      " |      Series or DataFrame\n",
      " |          Cross-section from the original Series or DataFrame\n",
      " |          corresponding to the selected index levels.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.loc : Access a group of rows and columns\n",
      " |          by label(s) or a boolean array.\n",
      " |      DataFrame.iloc : Purely integer-location based indexing\n",
      " |          for selection by position.\n",
      " |      \n",
      " |      Notes\n",
      " |      -----\n",
      " |      `xs` can not be used to set values.\n",
      " |      \n",
      " |      MultiIndex Slicers is a generic way to get/set values on\n",
      " |      any level or levels.\n",
      " |      It is a superset of `xs` functionality, see\n",
      " |      :ref:`MultiIndex Slicers <advanced.mi_slicers>`.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> d = {'num_legs': [4, 4, 2, 2],\n",
      " |      ...      'num_wings': [0, 0, 2, 2],\n",
      " |      ...      'class': ['mammal', 'mammal', 'mammal', 'bird'],\n",
      " |      ...      'animal': ['cat', 'dog', 'bat', 'penguin'],\n",
      " |      ...      'locomotion': ['walks', 'walks', 'flies', 'walks']}\n",
      " |      >>> df = pd.DataFrame(data=d)\n",
      " |      >>> df = df.set_index(['class', 'animal', 'locomotion'])\n",
      " |      >>> df\n",
      " |                                 num_legs  num_wings\n",
      " |      class  animal  locomotion\n",
      " |      mammal cat     walks              4          0\n",
      " |             dog     walks              4          0\n",
      " |             bat     flies              2          2\n",
      " |      bird   penguin walks              2          2\n",
      " |      \n",
      " |      Get values at specified index\n",
      " |      \n",
      " |      >>> df.xs('mammal')\n",
      " |                         num_legs  num_wings\n",
      " |      animal locomotion\n",
      " |      cat    walks              4          0\n",
      " |      dog    walks              4          0\n",
      " |      bat    flies              2          2\n",
      " |      \n",
      " |      Get values at several indexes\n",
      " |      \n",
      " |      >>> df.xs(('mammal', 'dog'))\n",
      " |                  num_legs  num_wings\n",
      " |      locomotion\n",
      " |      walks              4          0\n",
      " |      \n",
      " |      Get values at specified index and level\n",
      " |      \n",
      " |      >>> df.xs('cat', level=1)\n",
      " |                         num_legs  num_wings\n",
      " |      class  locomotion\n",
      " |      mammal walks              4          0\n",
      " |      \n",
      " |      Get values at several indexes and levels\n",
      " |      \n",
      " |      >>> df.xs(('bird', 'walks'),\n",
      " |      ...       level=[0, 'locomotion'])\n",
      " |               num_legs  num_wings\n",
      " |      animal\n",
      " |      penguin         2          2\n",
      " |      \n",
      " |      Get values at specified column and axis\n",
      " |      \n",
      " |      >>> df.xs('num_wings', axis=1)\n",
      " |      class   animal   locomotion\n",
      " |      mammal  cat      walks         0\n",
      " |              dog      walks         0\n",
      " |              bat      flies         2\n",
      " |      bird    penguin  walks         2\n",
      " |      Name: num_wings, dtype: int64\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data descriptors inherited from pandas.core.generic.NDFrame:\n",
      " |  \n",
      " |  at\n",
      " |      Access a single value for a row/column label pair.\n",
      " |      \n",
      " |      Similar to ``loc``, in that both provide label-based lookups. Use\n",
      " |      ``at`` if you only need to get or set a single value in a DataFrame\n",
      " |      or Series.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      KeyError\n",
      " |          When label does not exist in DataFrame\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.iat : Access a single value for a row/column pair by integer\n",
      " |          position.\n",
      " |      DataFrame.loc : Access a group of rows and columns by label(s).\n",
      " |      Series.at : Access a single value using a label.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([[0, 2, 3], [0, 4, 1], [10, 20, 30]],\n",
      " |      ...                   index=[4, 5, 6], columns=['A', 'B', 'C'])\n",
      " |      >>> df\n",
      " |          A   B   C\n",
      " |      4   0   2   3\n",
      " |      5   0   4   1\n",
      " |      6  10  20  30\n",
      " |      \n",
      " |      Get value at specified row/column pair\n",
      " |      \n",
      " |      >>> df.at[4, 'B']\n",
      " |      2\n",
      " |      \n",
      " |      Set value at specified row/column pair\n",
      " |      \n",
      " |      >>> df.at[4, 'B'] = 10\n",
      " |      >>> df.at[4, 'B']\n",
      " |      10\n",
      " |      \n",
      " |      Get value within a Series\n",
      " |      \n",
      " |      >>> df.loc[5].at['B']\n",
      " |      4\n",
      " |  \n",
      " |  blocks\n",
      " |      Internal property, property synonym for as_blocks().\n",
      " |      \n",
      " |      .. deprecated:: 0.21.0\n",
      " |  \n",
      " |  iat\n",
      " |      Access a single value for a row/column pair by integer position.\n",
      " |      \n",
      " |      Similar to ``iloc``, in that both provide integer-based lookups. Use\n",
      " |      ``iat`` if you only need to get or set a single value in a DataFrame\n",
      " |      or Series.\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      IndexError\n",
      " |          When integer position is out of bounds\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.at : Access a single value for a row/column label pair.\n",
      " |      DataFrame.loc : Access a group of rows and columns by label(s).\n",
      " |      DataFrame.iloc : Access a group of rows and columns by integer position(s).\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      >>> df = pd.DataFrame([[0, 2, 3], [0, 4, 1], [10, 20, 30]],\n",
      " |      ...                   columns=['A', 'B', 'C'])\n",
      " |      >>> df\n",
      " |          A   B   C\n",
      " |      0   0   2   3\n",
      " |      1   0   4   1\n",
      " |      2  10  20  30\n",
      " |      \n",
      " |      Get value at specified row/column pair\n",
      " |      \n",
      " |      >>> df.iat[1, 2]\n",
      " |      1\n",
      " |      \n",
      " |      Set value at specified row/column pair\n",
      " |      \n",
      " |      >>> df.iat[1, 2] = 10\n",
      " |      >>> df.iat[1, 2]\n",
      " |      10\n",
      " |      \n",
      " |      Get value within a series\n",
      " |      \n",
      " |      >>> df.loc[0].iat[1]\n",
      " |      2\n",
      " |  \n",
      " |  iloc\n",
      " |      Purely integer-location based indexing for selection by position.\n",
      " |      \n",
      " |      ``.iloc[]`` is primarily integer position based (from ``0`` to\n",
      " |      ``length-1`` of the axis), but may also be used with a boolean\n",
      " |      array.\n",
      " |      \n",
      " |      Allowed inputs are:\n",
      " |      \n",
      " |      - An integer, e.g. ``5``.\n",
      " |      - A list or array of integers, e.g. ``[4, 3, 0]``.\n",
      " |      - A slice object with ints, e.g. ``1:7``.\n",
      " |      - A boolean array.\n",
      " |      - A ``callable`` function with one argument (the calling Series, DataFrame\n",
      " |        or Panel) and that returns valid output for indexing (one of the above).\n",
      " |        This is useful in method chains, when you don't have a reference to the\n",
      " |        calling object, but would like to base your selection on some value.\n",
      " |      \n",
      " |      ``.iloc`` will raise ``IndexError`` if a requested indexer is\n",
      " |      out-of-bounds, except *slice* indexers which allow out-of-bounds\n",
      " |      indexing (this conforms with python/numpy *slice* semantics).\n",
      " |      \n",
      " |      See more at ref:`Selection by Position <indexing.integer>`.\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.iat : Fast integer location scalar accessor.\n",
      " |      DataFrame.loc : Purely label-location based indexer for selection by label.\n",
      " |      Series.iloc : Purely integer-location based indexing for\n",
      " |                     selection by position.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      \n",
      " |      >>> mydict = [{'a': 1, 'b': 2, 'c': 3, 'd': 4},\n",
      " |      ...           {'a': 100, 'b': 200, 'c': 300, 'd': 400},\n",
      " |      ...           {'a': 1000, 'b': 2000, 'c': 3000, 'd': 4000 }]\n",
      " |      >>> df = pd.DataFrame(mydict)\n",
      " |      >>> df\n",
      " |            a     b     c     d\n",
      " |      0     1     2     3     4\n",
      " |      1   100   200   300   400\n",
      " |      2  1000  2000  3000  4000\n",
      " |      \n",
      " |      **Indexing just the rows**\n",
      " |      \n",
      " |      With a scalar integer.\n",
      " |      \n",
      " |      >>> type(df.iloc[0])\n",
      " |      <class 'pandas.core.series.Series'>\n",
      " |      >>> df.iloc[0]\n",
      " |      a    1\n",
      " |      b    2\n",
      " |      c    3\n",
      " |      d    4\n",
      " |      Name: 0, dtype: int64\n",
      " |      \n",
      " |      With a list of integers.\n",
      " |      \n",
      " |      >>> df.iloc[[0]]\n",
      " |         a  b  c  d\n",
      " |      0  1  2  3  4\n",
      " |      >>> type(df.iloc[[0]])\n",
      " |      <class 'pandas.core.frame.DataFrame'>\n",
      " |      \n",
      " |      >>> df.iloc[[0, 1]]\n",
      " |           a    b    c    d\n",
      " |      0    1    2    3    4\n",
      " |      1  100  200  300  400\n",
      " |      \n",
      " |      With a `slice` object.\n",
      " |      \n",
      " |      >>> df.iloc[:3]\n",
      " |            a     b     c     d\n",
      " |      0     1     2     3     4\n",
      " |      1   100   200   300   400\n",
      " |      2  1000  2000  3000  4000\n",
      " |      \n",
      " |      With a boolean mask the same length as the index.\n",
      " |      \n",
      " |      >>> df.iloc[[True, False, True]]\n",
      " |            a     b     c     d\n",
      " |      0     1     2     3     4\n",
      " |      2  1000  2000  3000  4000\n",
      " |      \n",
      " |      With a callable, useful in method chains. The `x` passed\n",
      " |      to the ``lambda`` is the DataFrame being sliced. This selects\n",
      " |      the rows whose index label even.\n",
      " |      \n",
      " |      >>> df.iloc[lambda x: x.index % 2 == 0]\n",
      " |            a     b     c     d\n",
      " |      0     1     2     3     4\n",
      " |      2  1000  2000  3000  4000\n",
      " |      \n",
      " |      **Indexing both axes**\n",
      " |      \n",
      " |      You can mix the indexer types for the index and columns. Use ``:`` to\n",
      " |      select the entire axis.\n",
      " |      \n",
      " |      With scalar integers.\n",
      " |      \n",
      " |      >>> df.iloc[0, 1]\n",
      " |      2\n",
      " |      \n",
      " |      With lists of integers.\n",
      " |      \n",
      " |      >>> df.iloc[[0, 2], [1, 3]]\n",
      " |            b     d\n",
      " |      0     2     4\n",
      " |      2  2000  4000\n",
      " |      \n",
      " |      With `slice` objects.\n",
      " |      \n",
      " |      >>> df.iloc[1:3, 0:3]\n",
      " |            a     b     c\n",
      " |      1   100   200   300\n",
      " |      2  1000  2000  3000\n",
      " |      \n",
      " |      With a boolean array whose length matches the columns.\n",
      " |      \n",
      " |      >>> df.iloc[:, [True, False, True, False]]\n",
      " |            a     c\n",
      " |      0     1     3\n",
      " |      1   100   300\n",
      " |      2  1000  3000\n",
      " |      \n",
      " |      With a callable function that expects the Series or DataFrame.\n",
      " |      \n",
      " |      >>> df.iloc[:, lambda df: [0, 2]]\n",
      " |            a     c\n",
      " |      0     1     3\n",
      " |      1   100   300\n",
      " |      2  1000  3000\n",
      " |  \n",
      " |  is_copy\n",
      " |      Return the copy.\n",
      " |  \n",
      " |  ix\n",
      " |      A primarily label-location based indexer, with integer position\n",
      " |      fallback.\n",
      " |      \n",
      " |      Warning: Starting in 0.20.0, the .ix indexer is deprecated, in\n",
      " |      favor of the more strict .iloc and .loc indexers.\n",
      " |      \n",
      " |      ``.ix[]`` supports mixed integer and label based access. It is\n",
      " |      primarily label based, but will fall back to integer positional\n",
      " |      access unless the corresponding axis is of integer type.\n",
      " |      \n",
      " |      ``.ix`` is the most general indexer and will support any of the\n",
      " |      inputs in ``.loc`` and ``.iloc``. ``.ix`` also supports floating\n",
      " |      point label schemes. ``.ix`` is exceptionally useful when dealing\n",
      " |      with mixed positional and label based hierarchical indexes.\n",
      " |      \n",
      " |      However, when an axis is integer based, ONLY label based access\n",
      " |      and not positional access is supported. Thus, in such cases, it's\n",
      " |      usually better to be explicit and use ``.iloc`` or ``.loc``.\n",
      " |      \n",
      " |      See more at :ref:`Advanced Indexing <advanced>`.\n",
      " |  \n",
      " |  loc\n",
      " |      Access a group of rows and columns by label(s) or a boolean array.\n",
      " |      \n",
      " |      ``.loc[]`` is primarily label based, but may also be used with a\n",
      " |      boolean array.\n",
      " |      \n",
      " |      Allowed inputs are:\n",
      " |      \n",
      " |      - A single label, e.g. ``5`` or ``'a'``, (note that ``5`` is\n",
      " |        interpreted as a *label* of the index, and **never** as an\n",
      " |        integer position along the index).\n",
      " |      - A list or array of labels, e.g. ``['a', 'b', 'c']``.\n",
      " |      - A slice object with labels, e.g. ``'a':'f'``.\n",
      " |      \n",
      " |        .. warning:: Note that contrary to usual python slices, **both** the\n",
      " |            start and the stop are included\n",
      " |      \n",
      " |      - A boolean array of the same length as the axis being sliced,\n",
      " |        e.g. ``[True, False, True]``.\n",
      " |      - A ``callable`` function with one argument (the calling Series, DataFrame\n",
      " |        or Panel) and that returns valid output for indexing (one of the above)\n",
      " |      \n",
      " |      See more at :ref:`Selection by Label <indexing.label>`\n",
      " |      \n",
      " |      Raises\n",
      " |      ------\n",
      " |      KeyError:\n",
      " |          when any items are not found\n",
      " |      \n",
      " |      See Also\n",
      " |      --------\n",
      " |      DataFrame.at : Access a single value for a row/column label pair.\n",
      " |      DataFrame.iloc : Access group of rows and columns by integer position(s).\n",
      " |      DataFrame.xs : Returns a cross-section (row(s) or column(s)) from the\n",
      " |          Series/DataFrame.\n",
      " |      Series.loc : Access group of values using labels.\n",
      " |      \n",
      " |      Examples\n",
      " |      --------\n",
      " |      **Getting values**\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[1, 2], [4, 5], [7, 8]],\n",
      " |      ...      index=['cobra', 'viper', 'sidewinder'],\n",
      " |      ...      columns=['max_speed', 'shield'])\n",
      " |      >>> df\n",
      " |                  max_speed  shield\n",
      " |      cobra               1       2\n",
      " |      viper               4       5\n",
      " |      sidewinder          7       8\n",
      " |      \n",
      " |      Single label. Note this returns the row as a Series.\n",
      " |      \n",
      " |      >>> df.loc['viper']\n",
      " |      max_speed    4\n",
      " |      shield       5\n",
      " |      Name: viper, dtype: int64\n",
      " |      \n",
      " |      List of labels. Note using ``[[]]`` returns a DataFrame.\n",
      " |      \n",
      " |      >>> df.loc[['viper', 'sidewinder']]\n",
      " |                  max_speed  shield\n",
      " |      viper               4       5\n",
      " |      sidewinder          7       8\n",
      " |      \n",
      " |      Single label for row and column\n",
      " |      \n",
      " |      >>> df.loc['cobra', 'shield']\n",
      " |      2\n",
      " |      \n",
      " |      Slice with labels for row and single label for column. As mentioned\n",
      " |      above, note that both the start and stop of the slice are included.\n",
      " |      \n",
      " |      >>> df.loc['cobra':'viper', 'max_speed']\n",
      " |      cobra    1\n",
      " |      viper    4\n",
      " |      Name: max_speed, dtype: int64\n",
      " |      \n",
      " |      Boolean list with the same length as the row axis\n",
      " |      \n",
      " |      >>> df.loc[[False, False, True]]\n",
      " |                  max_speed  shield\n",
      " |      sidewinder          7       8\n",
      " |      \n",
      " |      Conditional that returns a boolean Series\n",
      " |      \n",
      " |      >>> df.loc[df['shield'] > 6]\n",
      " |                  max_speed  shield\n",
      " |      sidewinder          7       8\n",
      " |      \n",
      " |      Conditional that returns a boolean Series with column labels specified\n",
      " |      \n",
      " |      >>> df.loc[df['shield'] > 6, ['max_speed']]\n",
      " |                  max_speed\n",
      " |      sidewinder          7\n",
      " |      \n",
      " |      Callable that returns a boolean Series\n",
      " |      \n",
      " |      >>> df.loc[lambda df: df['shield'] == 8]\n",
      " |                  max_speed  shield\n",
      " |      sidewinder          7       8\n",
      " |      \n",
      " |      **Setting values**\n",
      " |      \n",
      " |      Set value for all items matching the list of labels\n",
      " |      \n",
      " |      >>> df.loc[['viper', 'sidewinder'], ['shield']] = 50\n",
      " |      >>> df\n",
      " |                  max_speed  shield\n",
      " |      cobra               1       2\n",
      " |      viper               4      50\n",
      " |      sidewinder          7      50\n",
      " |      \n",
      " |      Set value for an entire row\n",
      " |      \n",
      " |      >>> df.loc['cobra'] = 10\n",
      " |      >>> df\n",
      " |                  max_speed  shield\n",
      " |      cobra              10      10\n",
      " |      viper               4      50\n",
      " |      sidewinder          7      50\n",
      " |      \n",
      " |      Set value for an entire column\n",
      " |      \n",
      " |      >>> df.loc[:, 'max_speed'] = 30\n",
      " |      >>> df\n",
      " |                  max_speed  shield\n",
      " |      cobra              30      10\n",
      " |      viper              30      50\n",
      " |      sidewinder         30      50\n",
      " |      \n",
      " |      Set value for rows matching callable condition\n",
      " |      \n",
      " |      >>> df.loc[df['shield'] > 35] = 0\n",
      " |      >>> df\n",
      " |                  max_speed  shield\n",
      " |      cobra              30      10\n",
      " |      viper               0       0\n",
      " |      sidewinder          0       0\n",
      " |      \n",
      " |      **Getting values on a DataFrame with an index that has integer labels**\n",
      " |      \n",
      " |      Another example using integers for the index\n",
      " |      \n",
      " |      >>> df = pd.DataFrame([[1, 2], [4, 5], [7, 8]],\n",
      " |      ...      index=[7, 8, 9], columns=['max_speed', 'shield'])\n",
      " |      >>> df\n",
      " |         max_speed  shield\n",
      " |      7          1       2\n",
      " |      8          4       5\n",
      " |      9          7       8\n",
      " |      \n",
      " |      Slice with integer labels for rows. As mentioned above, note that both\n",
      " |      the start and stop of the slice are included.\n",
      " |      \n",
      " |      >>> df.loc[7:9]\n",
      " |         max_speed  shield\n",
      " |      7          1       2\n",
      " |      8          4       5\n",
      " |      9          7       8\n",
      " |      \n",
      " |      **Getting values with a MultiIndex**\n",
      " |      \n",
      " |      A number of examples using a DataFrame with a MultiIndex\n",
      " |      \n",
      " |      >>> tuples = [\n",
      " |      ...    ('cobra', 'mark i'), ('cobra', 'mark ii'),\n",
      " |      ...    ('sidewinder', 'mark i'), ('sidewinder', 'mark ii'),\n",
      " |      ...    ('viper', 'mark ii'), ('viper', 'mark iii')\n",
      " |      ... ]\n",
      " |      >>> index = pd.MultiIndex.from_tuples(tuples)\n",
      " |      >>> values = [[12, 2], [0, 4], [10, 20],\n",
      " |      ...         [1, 4], [7, 1], [16, 36]]\n",
      " |      >>> df = pd.DataFrame(values, columns=['max_speed', 'shield'], index=index)\n",
      " |      >>> df\n",
      " |                           max_speed  shield\n",
      " |      cobra      mark i           12       2\n",
      " |                 mark ii           0       4\n",
      " |      sidewinder mark i           10      20\n",
      " |                 mark ii           1       4\n",
      " |      viper      mark ii           7       1\n",
      " |                 mark iii         16      36\n",
      " |      \n",
      " |      Single label. Note this returns a DataFrame with a single index.\n",
      " |      \n",
      " |      >>> df.loc['cobra']\n",
      " |               max_speed  shield\n",
      " |      mark i          12       2\n",
      " |      mark ii          0       4\n",
      " |      \n",
      " |      Single index tuple. Note this returns a Series.\n",
      " |      \n",
      " |      >>> df.loc[('cobra', 'mark ii')]\n",
      " |      max_speed    0\n",
      " |      shield       4\n",
      " |      Name: (cobra, mark ii), dtype: int64\n",
      " |      \n",
      " |      Single label for row and column. Similar to passing in a tuple, this\n",
      " |      returns a Series.\n",
      " |      \n",
      " |      >>> df.loc['cobra', 'mark i']\n",
      " |      max_speed    12\n",
      " |      shield        2\n",
      " |      Name: (cobra, mark i), dtype: int64\n",
      " |      \n",
      " |      Single tuple. Note using ``[[]]`` returns a DataFrame.\n",
      " |      \n",
      " |      >>> df.loc[[('cobra', 'mark ii')]]\n",
      " |                     max_speed  shield\n",
      " |      cobra mark ii          0       4\n",
      " |      \n",
      " |      Single tuple for the index with a single label for the column\n",
      " |      \n",
      " |      >>> df.loc[('cobra', 'mark i'), 'shield']\n",
      " |      2\n",
      " |      \n",
      " |      Slice from index tuple to single label\n",
      " |      \n",
      " |      >>> df.loc[('cobra', 'mark i'):'viper']\n",
      " |                           max_speed  shield\n",
      " |      cobra      mark i           12       2\n",
      " |                 mark ii           0       4\n",
      " |      sidewinder mark i           10      20\n",
      " |                 mark ii           1       4\n",
      " |      viper      mark ii           7       1\n",
      " |                 mark iii         16      36\n",
      " |      \n",
      " |      Slice from index tuple to index tuple\n",
      " |      \n",
      " |      >>> df.loc[('cobra', 'mark i'):('viper', 'mark ii')]\n",
      " |                          max_speed  shield\n",
      " |      cobra      mark i          12       2\n",
      " |                 mark ii          0       4\n",
      " |      sidewinder mark i          10      20\n",
      " |                 mark ii          1       4\n",
      " |      viper      mark ii          7       1\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Data and other attributes inherited from pandas.core.generic.NDFrame:\n",
      " |  \n",
      " |  timetuple = None\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Methods inherited from pandas.core.base.PandasObject:\n",
      " |  \n",
      " |  __sizeof__(self)\n",
      " |      Generates the total memory usage for an object that returns\n",
      " |      either a value or Series of values\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Methods inherited from pandas.core.base.StringMixin:\n",
      " |  \n",
      " |  __bytes__(self)\n",
      " |      Return a string representation for a particular object.\n",
      " |      \n",
      " |      Invoked by bytes(obj) in py3 only.\n",
      " |      Yields a bytestring in both py2/py3.\n",
      " |  \n",
      " |  __repr__(self)\n",
      " |      Return a string representation for a particular object.\n",
      " |      \n",
      " |      Yields Bytestring in Py2, Unicode String in py3.\n",
      " |  \n",
      " |  __str__(self)\n",
      " |      Return a string representation for a particular Object\n",
      " |      \n",
      " |      Invoked by str(df) in both py2/py3.\n",
      " |      Yields Bytestring in Py2, Unicode String in py3.\n",
      " |  \n",
      " |  ----------------------------------------------------------------------\n",
      " |  Methods inherited from pandas.core.accessor.DirNamesMixin:\n",
      " |  \n",
      " |  __dir__(self)\n",
      " |      Provide method name lookup and completion\n",
      " |      Only provide 'public' methods\n",
      "\n"
     ]
    }
   ],
   "source": [
    "help(df['Age'].isna())\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [
    {
     "data": {
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       "    </tr>\n",
       "    <tr>\n",
       "      <th>19</th>\n",
       "      <td>20</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Masselmani, Mrs. Fatima</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2649</td>\n",
       "      <td>7.2250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>26</th>\n",
       "      <td>27</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Emir, Mr. Farred Chehab</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2631</td>\n",
       "      <td>7.2250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>28</th>\n",
       "      <td>29</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>O'Dwyer, Miss. Ellen \"Nellie\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>330959</td>\n",
       "      <td>7.8792</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>29</th>\n",
       "      <td>30</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Todoroff, Mr. Lalio</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349216</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>31</th>\n",
       "      <td>32</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Spencer, Mrs. William Augustus (Marie Eugenie)</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>PC 17569</td>\n",
       "      <td>146.5208</td>\n",
       "      <td>B78</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>32</th>\n",
       "      <td>33</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Glynn, Miss. Mary Agatha</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>335677</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>36</th>\n",
       "      <td>37</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Mamee, Mr. Hanna</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2677</td>\n",
       "      <td>7.2292</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>42</th>\n",
       "      <td>43</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Kraeff, Mr. Theodor</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349253</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>45</th>\n",
       "      <td>46</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Rogers, Mr. William John</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>S.C./A.4. 23567</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>46</th>\n",
       "      <td>47</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Lennon, Mr. Denis</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>370371</td>\n",
       "      <td>15.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>47</th>\n",
       "      <td>48</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>O'Driscoll, Miss. Bridget</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>14311</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>48</th>\n",
       "      <td>49</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Samaan, Mr. Youssef</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>2</td>\n",
       "      <td>0</td>\n",
       "      <td>2662</td>\n",
       "      <td>21.6792</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>55</th>\n",
       "      <td>56</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Woolner, Mr. Hugh</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>19947</td>\n",
       "      <td>35.5000</td>\n",
       "      <td>C52</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>64</th>\n",
       "      <td>65</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Stewart, Mr. Albert A</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>PC 17605</td>\n",
       "      <td>27.7208</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>65</th>\n",
       "      <td>66</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Moubarek, Master. Gerios</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>2661</td>\n",
       "      <td>15.2458</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>76</th>\n",
       "      <td>77</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Staneff, Mr. Ivan</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349208</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>77</th>\n",
       "      <td>78</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Moutal, Mr. Rahamin Haim</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>374746</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>82</th>\n",
       "      <td>83</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>McDermott, Miss. Brigdet Delia</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>330932</td>\n",
       "      <td>7.7875</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>87</th>\n",
       "      <td>88</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Slocovski, Mr. Selman Francis</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>SOTON/OQ 392086</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>95</th>\n",
       "      <td>96</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Shorney, Mr. Charles Joseph</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>374910</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>101</th>\n",
       "      <td>102</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Petroff, Mr. Pastcho (\"Pentcho\")</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349215</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>107</th>\n",
       "      <td>108</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Moss, Mr. Albert Johan</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>312991</td>\n",
       "      <td>7.7750</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>109</th>\n",
       "      <td>110</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Moran, Miss. Bertha</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>371110</td>\n",
       "      <td>24.1500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>121</th>\n",
       "      <td>122</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Moore, Mr. Leonard Charles</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>A4. 54510</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>126</th>\n",
       "      <td>127</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>McMahon, Mr. Martin</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>370372</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>128</th>\n",
       "      <td>129</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Peter, Miss. Anna</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>2668</td>\n",
       "      <td>22.3583</td>\n",
       "      <td>F E69</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>140</th>\n",
       "      <td>141</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Boulos, Mrs. Joseph (Sultana)</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>2678</td>\n",
       "      <td>15.2458</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>154</th>\n",
       "      <td>155</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Olsen, Mr. Ole Martin</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>Fa 265302</td>\n",
       "      <td>7.3125</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>...</th>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>718</th>\n",
       "      <td>719</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>McEvoy, Mr. Michael</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36568</td>\n",
       "      <td>15.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>727</th>\n",
       "      <td>728</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Mannion, Miss. Margareth</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36866</td>\n",
       "      <td>7.7375</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>732</th>\n",
       "      <td>733</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>Knight, Mr. Robert J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>239855</td>\n",
       "      <td>0.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>738</th>\n",
       "      <td>739</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Ivanoff, Mr. Kanio</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349201</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>739</th>\n",
       "      <td>740</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Nankoff, Mr. Minko</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349218</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>740</th>\n",
       "      <td>741</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Hawksford, Mr. Walter James</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>16988</td>\n",
       "      <td>30.0000</td>\n",
       "      <td>D45</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>760</th>\n",
       "      <td>761</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Garfirth, Mr. John</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>358585</td>\n",
       "      <td>14.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>766</th>\n",
       "      <td>767</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Brewe, Dr. Arthur Jackson</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>112379</td>\n",
       "      <td>39.6000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>768</th>\n",
       "      <td>769</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Moran, Mr. Daniel J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>371110</td>\n",
       "      <td>24.1500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>773</th>\n",
       "      <td>774</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Elias, Mr. Dibo</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2674</td>\n",
       "      <td>7.2250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>776</th>\n",
       "      <td>777</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Tobin, Mr. Roger</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>383121</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>F38</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>778</th>\n",
       "      <td>779</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Kilgannon, Mr. Thomas J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36865</td>\n",
       "      <td>7.7375</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>783</th>\n",
       "      <td>784</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnston, Mr. Andrew G</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>W./C. 6607</td>\n",
       "      <td>23.4500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>790</th>\n",
       "      <td>791</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Keane, Mr. Andrew \"Andy\"</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>12460</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>792</th>\n",
       "      <td>793</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Miss. Stella Anna</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>793</th>\n",
       "      <td>794</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Hoyt, Mr. William Fisher</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>PC 17600</td>\n",
       "      <td>30.6958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>815</th>\n",
       "      <td>816</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Fry, Mr. Richard</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>112058</td>\n",
       "      <td>0.0000</td>\n",
       "      <td>B102</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>825</th>\n",
       "      <td>826</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Flynn, Mr. John</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>368323</td>\n",
       "      <td>6.9500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>826</th>\n",
       "      <td>827</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Lam, Mr. Len</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>1601</td>\n",
       "      <td>56.4958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>828</th>\n",
       "      <td>829</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>McCormack, Mr. Thomas Joseph</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>367228</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>832</th>\n",
       "      <td>833</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Saad, Mr. Amin</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2671</td>\n",
       "      <td>7.2292</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>837</th>\n",
       "      <td>838</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sirota, Mr. Maurice</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>392092</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>839</th>\n",
       "      <td>840</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Marechal, Mr. Pierre</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>11774</td>\n",
       "      <td>29.7000</td>\n",
       "      <td>C47</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>846</th>\n",
       "      <td>847</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Mr. Douglas Bullen</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>849</th>\n",
       "      <td>850</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Goldenberg, Mrs. Samuel L (Edwiga Grabowska)</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>17453</td>\n",
       "      <td>89.1042</td>\n",
       "      <td>C92</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>859</th>\n",
       "      <td>860</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Razi, Mr. Raihed</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2629</td>\n",
       "      <td>7.2292</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>863</th>\n",
       "      <td>864</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Miss. Dorothy Edith \"Dolly\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>868</th>\n",
       "      <td>869</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>van Melkebeke, Mr. Philemon</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>345777</td>\n",
       "      <td>9.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>878</th>\n",
       "      <td>879</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Laleff, Mr. Kristo</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349217</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>888</th>\n",
       "      <td>889</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnston, Miss. Catherine Helen \"Carrie\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>W./C. 6607</td>\n",
       "      <td>23.4500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "<p>177 rows × 12 columns</p>\n",
       "</div>"
      ],
      "text/plain": [
       "     PassengerId  Survived  Pclass  \\\n",
       "5              6         0       3   \n",
       "17            18         1       2   \n",
       "19            20         1       3   \n",
       "26            27         0       3   \n",
       "28            29         1       3   \n",
       "29            30         0       3   \n",
       "31            32         1       1   \n",
       "32            33         1       3   \n",
       "36            37         1       3   \n",
       "42            43         0       3   \n",
       "45            46         0       3   \n",
       "46            47         0       3   \n",
       "47            48         1       3   \n",
       "48            49         0       3   \n",
       "55            56         1       1   \n",
       "64            65         0       1   \n",
       "65            66         1       3   \n",
       "76            77         0       3   \n",
       "77            78         0       3   \n",
       "82            83         1       3   \n",
       "87            88         0       3   \n",
       "95            96         0       3   \n",
       "101          102         0       3   \n",
       "107          108         1       3   \n",
       "109          110         1       3   \n",
       "121          122         0       3   \n",
       "126          127         0       3   \n",
       "128          129         1       3   \n",
       "140          141         0       3   \n",
       "154          155         0       3   \n",
       "..           ...       ...     ...   \n",
       "718          719         0       3   \n",
       "727          728         1       3   \n",
       "732          733         0       2   \n",
       "738          739         0       3   \n",
       "739          740         0       3   \n",
       "740          741         1       1   \n",
       "760          761         0       3   \n",
       "766          767         0       1   \n",
       "768          769         0       3   \n",
       "773          774         0       3   \n",
       "776          777         0       3   \n",
       "778          779         0       3   \n",
       "783          784         0       3   \n",
       "790          791         0       3   \n",
       "792          793         0       3   \n",
       "793          794         0       1   \n",
       "815          816         0       1   \n",
       "825          826         0       3   \n",
       "826          827         0       3   \n",
       "828          829         1       3   \n",
       "832          833         0       3   \n",
       "837          838         0       3   \n",
       "839          840         1       1   \n",
       "846          847         0       3   \n",
       "849          850         1       1   \n",
       "859          860         0       3   \n",
       "863          864         0       3   \n",
       "868          869         0       3   \n",
       "878          879         0       3   \n",
       "888          889         0       3   \n",
       "\n",
       "                                               Name     Sex  Age  SibSp  \\\n",
       "5                                  Moran, Mr. James    male  NaN      0   \n",
       "17                     Williams, Mr. Charles Eugene    male  NaN      0   \n",
       "19                          Masselmani, Mrs. Fatima  female  NaN      0   \n",
       "26                          Emir, Mr. Farred Chehab    male  NaN      0   \n",
       "28                    O'Dwyer, Miss. Ellen \"Nellie\"  female  NaN      0   \n",
       "29                              Todoroff, Mr. Lalio    male  NaN      0   \n",
       "31   Spencer, Mrs. William Augustus (Marie Eugenie)  female  NaN      1   \n",
       "32                         Glynn, Miss. Mary Agatha  female  NaN      0   \n",
       "36                                 Mamee, Mr. Hanna    male  NaN      0   \n",
       "42                              Kraeff, Mr. Theodor    male  NaN      0   \n",
       "45                         Rogers, Mr. William John    male  NaN      0   \n",
       "46                                Lennon, Mr. Denis    male  NaN      1   \n",
       "47                        O'Driscoll, Miss. Bridget  female  NaN      0   \n",
       "48                              Samaan, Mr. Youssef    male  NaN      2   \n",
       "55                                Woolner, Mr. Hugh    male  NaN      0   \n",
       "64                            Stewart, Mr. Albert A    male  NaN      0   \n",
       "65                         Moubarek, Master. Gerios    male  NaN      1   \n",
       "76                                Staneff, Mr. Ivan    male  NaN      0   \n",
       "77                         Moutal, Mr. Rahamin Haim    male  NaN      0   \n",
       "82                   McDermott, Miss. Brigdet Delia  female  NaN      0   \n",
       "87                    Slocovski, Mr. Selman Francis    male  NaN      0   \n",
       "95                      Shorney, Mr. Charles Joseph    male  NaN      0   \n",
       "101                Petroff, Mr. Pastcho (\"Pentcho\")    male  NaN      0   \n",
       "107                          Moss, Mr. Albert Johan    male  NaN      0   \n",
       "109                             Moran, Miss. Bertha  female  NaN      1   \n",
       "121                      Moore, Mr. Leonard Charles    male  NaN      0   \n",
       "126                             McMahon, Mr. Martin    male  NaN      0   \n",
       "128                               Peter, Miss. Anna  female  NaN      1   \n",
       "140                   Boulos, Mrs. Joseph (Sultana)  female  NaN      0   \n",
       "154                           Olsen, Mr. Ole Martin    male  NaN      0   \n",
       "..                                              ...     ...  ...    ...   \n",
       "718                             McEvoy, Mr. Michael    male  NaN      0   \n",
       "727                        Mannion, Miss. Margareth  female  NaN      0   \n",
       "732                            Knight, Mr. Robert J    male  NaN      0   \n",
       "738                              Ivanoff, Mr. Kanio    male  NaN      0   \n",
       "739                              Nankoff, Mr. Minko    male  NaN      0   \n",
       "740                     Hawksford, Mr. Walter James    male  NaN      0   \n",
       "760                              Garfirth, Mr. John    male  NaN      0   \n",
       "766                       Brewe, Dr. Arthur Jackson    male  NaN      0   \n",
       "768                             Moran, Mr. Daniel J    male  NaN      1   \n",
       "773                                 Elias, Mr. Dibo    male  NaN      0   \n",
       "776                                Tobin, Mr. Roger    male  NaN      0   \n",
       "778                         Kilgannon, Mr. Thomas J    male  NaN      0   \n",
       "783                          Johnston, Mr. Andrew G    male  NaN      1   \n",
       "790                        Keane, Mr. Andrew \"Andy\"    male  NaN      0   \n",
       "792                         Sage, Miss. Stella Anna  female  NaN      8   \n",
       "793                        Hoyt, Mr. William Fisher    male  NaN      0   \n",
       "815                                Fry, Mr. Richard    male  NaN      0   \n",
       "825                                 Flynn, Mr. John    male  NaN      0   \n",
       "826                                    Lam, Mr. Len    male  NaN      0   \n",
       "828                    McCormack, Mr. Thomas Joseph    male  NaN      0   \n",
       "832                                  Saad, Mr. Amin    male  NaN      0   \n",
       "837                             Sirota, Mr. Maurice    male  NaN      0   \n",
       "839                            Marechal, Mr. Pierre    male  NaN      0   \n",
       "846                        Sage, Mr. Douglas Bullen    male  NaN      8   \n",
       "849    Goldenberg, Mrs. Samuel L (Edwiga Grabowska)  female  NaN      1   \n",
       "859                                Razi, Mr. Raihed    male  NaN      0   \n",
       "863               Sage, Miss. Dorothy Edith \"Dolly\"  female  NaN      8   \n",
       "868                     van Melkebeke, Mr. Philemon    male  NaN      0   \n",
       "878                              Laleff, Mr. Kristo    male  NaN      0   \n",
       "888        Johnston, Miss. Catherine Helen \"Carrie\"  female  NaN      1   \n",
       "\n",
       "     Parch           Ticket      Fare  Cabin Embarked  \n",
       "5        0           330877    8.4583    NaN        Q  \n",
       "17       0           244373   13.0000    NaN        S  \n",
       "19       0             2649    7.2250    NaN        C  \n",
       "26       0             2631    7.2250    NaN        C  \n",
       "28       0           330959    7.8792    NaN        Q  \n",
       "29       0           349216    7.8958    NaN        S  \n",
       "31       0         PC 17569  146.5208    B78        C  \n",
       "32       0           335677    7.7500    NaN        Q  \n",
       "36       0             2677    7.2292    NaN        C  \n",
       "42       0           349253    7.8958    NaN        C  \n",
       "45       0  S.C./A.4. 23567    8.0500    NaN        S  \n",
       "46       0           370371   15.5000    NaN        Q  \n",
       "47       0            14311    7.7500    NaN        Q  \n",
       "48       0             2662   21.6792    NaN        C  \n",
       "55       0            19947   35.5000    C52        S  \n",
       "64       0         PC 17605   27.7208    NaN        C  \n",
       "65       1             2661   15.2458    NaN        C  \n",
       "76       0           349208    7.8958    NaN        S  \n",
       "77       0           374746    8.0500    NaN        S  \n",
       "82       0           330932    7.7875    NaN        Q  \n",
       "87       0  SOTON/OQ 392086    8.0500    NaN        S  \n",
       "95       0           374910    8.0500    NaN        S  \n",
       "101      0           349215    7.8958    NaN        S  \n",
       "107      0           312991    7.7750    NaN        S  \n",
       "109      0           371110   24.1500    NaN        Q  \n",
       "121      0        A4. 54510    8.0500    NaN        S  \n",
       "126      0           370372    7.7500    NaN        Q  \n",
       "128      1             2668   22.3583  F E69        C  \n",
       "140      2             2678   15.2458    NaN        C  \n",
       "154      0        Fa 265302    7.3125    NaN        S  \n",
       "..     ...              ...       ...    ...      ...  \n",
       "718      0            36568   15.5000    NaN        Q  \n",
       "727      0            36866    7.7375    NaN        Q  \n",
       "732      0           239855    0.0000    NaN        S  \n",
       "738      0           349201    7.8958    NaN        S  \n",
       "739      0           349218    7.8958    NaN        S  \n",
       "740      0            16988   30.0000    D45        S  \n",
       "760      0           358585   14.5000    NaN        S  \n",
       "766      0           112379   39.6000    NaN        C  \n",
       "768      0           371110   24.1500    NaN        Q  \n",
       "773      0             2674    7.2250    NaN        C  \n",
       "776      0           383121    7.7500    F38        Q  \n",
       "778      0            36865    7.7375    NaN        Q  \n",
       "783      2       W./C. 6607   23.4500    NaN        S  \n",
       "790      0            12460    7.7500    NaN        Q  \n",
       "792      2         CA. 2343   69.5500    NaN        S  \n",
       "793      0         PC 17600   30.6958    NaN        C  \n",
       "815      0           112058    0.0000   B102        S  \n",
       "825      0           368323    6.9500    NaN        Q  \n",
       "826      0             1601   56.4958    NaN        S  \n",
       "828      0           367228    7.7500    NaN        Q  \n",
       "832      0             2671    7.2292    NaN        C  \n",
       "837      0           392092    8.0500    NaN        S  \n",
       "839      0            11774   29.7000    C47        C  \n",
       "846      2         CA. 2343   69.5500    NaN        S  \n",
       "849      0            17453   89.1042    C92        C  \n",
       "859      0             2629    7.2292    NaN        C  \n",
       "863      2         CA. 2343   69.5500    NaN        S  \n",
       "868      0           345777    9.5000    NaN        S  \n",
       "878      0           349217    7.8958    NaN        S  \n",
       "888      2       W./C. 6607   23.4500    NaN        S  \n",
       "\n",
       "[177 rows x 12 columns]"
      ]
     },
     "execution_count": 12,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df[df['Age'].isnull()]\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "5     NaN\n",
       "17    NaN\n",
       "19    NaN\n",
       "26    NaN\n",
       "28    NaN\n",
       "29    NaN\n",
       "31    NaN\n",
       "32    NaN\n",
       "36    NaN\n",
       "42    NaN\n",
       "45    NaN\n",
       "46    NaN\n",
       "47    NaN\n",
       "48    NaN\n",
       "55    NaN\n",
       "64    NaN\n",
       "65    NaN\n",
       "76    NaN\n",
       "77    NaN\n",
       "82    NaN\n",
       "87    NaN\n",
       "95    NaN\n",
       "101   NaN\n",
       "107   NaN\n",
       "109   NaN\n",
       "121   NaN\n",
       "126   NaN\n",
       "128   NaN\n",
       "140   NaN\n",
       "154   NaN\n",
       "       ..\n",
       "718   NaN\n",
       "727   NaN\n",
       "732   NaN\n",
       "738   NaN\n",
       "739   NaN\n",
       "740   NaN\n",
       "760   NaN\n",
       "766   NaN\n",
       "768   NaN\n",
       "773   NaN\n",
       "776   NaN\n",
       "778   NaN\n",
       "783   NaN\n",
       "790   NaN\n",
       "792   NaN\n",
       "793   NaN\n",
       "815   NaN\n",
       "825   NaN\n",
       "826   NaN\n",
       "828   NaN\n",
       "832   NaN\n",
       "837   NaN\n",
       "839   NaN\n",
       "846   NaN\n",
       "849   NaN\n",
       "859   NaN\n",
       "863   NaN\n",
       "868   NaN\n",
       "878   NaN\n",
       "888   NaN\n",
       "Name: Age, Length: 177, dtype: float64"
      ]
     },
     "execution_count": 13,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "age = df['Age'] # 年龄系列\n",
    "age[pd.isnull(age)]# 筛选出为空的记录"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
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       "      <td>141</td>\n",
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       "      <td>Fa 265302</td>\n",
       "      <td>7.3125</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>...</th>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "      <td>...</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>718</th>\n",
       "      <td>719</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>McEvoy, Mr. Michael</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36568</td>\n",
       "      <td>15.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>727</th>\n",
       "      <td>728</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>Mannion, Miss. Margareth</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36866</td>\n",
       "      <td>7.7375</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>732</th>\n",
       "      <td>733</td>\n",
       "      <td>0</td>\n",
       "      <td>2</td>\n",
       "      <td>Knight, Mr. Robert J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>239855</td>\n",
       "      <td>0.0000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>738</th>\n",
       "      <td>739</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Ivanoff, Mr. Kanio</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349201</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>739</th>\n",
       "      <td>740</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Nankoff, Mr. Minko</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349218</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>740</th>\n",
       "      <td>741</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Hawksford, Mr. Walter James</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>16988</td>\n",
       "      <td>30.0000</td>\n",
       "      <td>D45</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>760</th>\n",
       "      <td>761</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Garfirth, Mr. John</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>358585</td>\n",
       "      <td>14.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>766</th>\n",
       "      <td>767</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Brewe, Dr. Arthur Jackson</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>112379</td>\n",
       "      <td>39.6000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>768</th>\n",
       "      <td>769</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Moran, Mr. Daniel J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>371110</td>\n",
       "      <td>24.1500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>773</th>\n",
       "      <td>774</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Elias, Mr. Dibo</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2674</td>\n",
       "      <td>7.2250</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>776</th>\n",
       "      <td>777</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Tobin, Mr. Roger</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>383121</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>F38</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>778</th>\n",
       "      <td>779</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Kilgannon, Mr. Thomas J</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>36865</td>\n",
       "      <td>7.7375</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>783</th>\n",
       "      <td>784</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnston, Mr. Andrew G</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>W./C. 6607</td>\n",
       "      <td>23.4500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>790</th>\n",
       "      <td>791</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Keane, Mr. Andrew \"Andy\"</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>12460</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>792</th>\n",
       "      <td>793</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Miss. Stella Anna</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>793</th>\n",
       "      <td>794</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Hoyt, Mr. William Fisher</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>PC 17600</td>\n",
       "      <td>30.6958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>815</th>\n",
       "      <td>816</td>\n",
       "      <td>0</td>\n",
       "      <td>1</td>\n",
       "      <td>Fry, Mr. Richard</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>112058</td>\n",
       "      <td>0.0000</td>\n",
       "      <td>B102</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>825</th>\n",
       "      <td>826</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Flynn, Mr. John</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>368323</td>\n",
       "      <td>6.9500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>826</th>\n",
       "      <td>827</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Lam, Mr. Len</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>1601</td>\n",
       "      <td>56.4958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>828</th>\n",
       "      <td>829</td>\n",
       "      <td>1</td>\n",
       "      <td>3</td>\n",
       "      <td>McCormack, Mr. Thomas Joseph</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>367228</td>\n",
       "      <td>7.7500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>Q</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>832</th>\n",
       "      <td>833</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Saad, Mr. Amin</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2671</td>\n",
       "      <td>7.2292</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>837</th>\n",
       "      <td>838</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sirota, Mr. Maurice</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>392092</td>\n",
       "      <td>8.0500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>839</th>\n",
       "      <td>840</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Marechal, Mr. Pierre</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>11774</td>\n",
       "      <td>29.7000</td>\n",
       "      <td>C47</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>846</th>\n",
       "      <td>847</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Mr. Douglas Bullen</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>849</th>\n",
       "      <td>850</td>\n",
       "      <td>1</td>\n",
       "      <td>1</td>\n",
       "      <td>Goldenberg, Mrs. Samuel L (Edwiga Grabowska)</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>0</td>\n",
       "      <td>17453</td>\n",
       "      <td>89.1042</td>\n",
       "      <td>C92</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>859</th>\n",
       "      <td>860</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Razi, Mr. Raihed</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>2629</td>\n",
       "      <td>7.2292</td>\n",
       "      <td>NaN</td>\n",
       "      <td>C</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>863</th>\n",
       "      <td>864</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Sage, Miss. Dorothy Edith \"Dolly\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>8</td>\n",
       "      <td>2</td>\n",
       "      <td>CA. 2343</td>\n",
       "      <td>69.5500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>868</th>\n",
       "      <td>869</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>van Melkebeke, Mr. Philemon</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>345777</td>\n",
       "      <td>9.5000</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>878</th>\n",
       "      <td>879</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Laleff, Mr. Kristo</td>\n",
       "      <td>male</td>\n",
       "      <td>NaN</td>\n",
       "      <td>0</td>\n",
       "      <td>0</td>\n",
       "      <td>349217</td>\n",
       "      <td>7.8958</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>888</th>\n",
       "      <td>889</td>\n",
       "      <td>0</td>\n",
       "      <td>3</td>\n",
       "      <td>Johnston, Miss. Catherine Helen \"Carrie\"</td>\n",
       "      <td>female</td>\n",
       "      <td>NaN</td>\n",
       "      <td>1</td>\n",
       "      <td>2</td>\n",
       "      <td>W./C. 6607</td>\n",
       "      <td>23.4500</td>\n",
       "      <td>NaN</td>\n",
       "      <td>S</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "<p>177 rows × 12 columns</p>\n",
       "</div>"
      ],
      "text/plain": [
       "     PassengerId  Survived  Pclass  \\\n",
       "5              6         0       3   \n",
       "17            18         1       2   \n",
       "19            20         1       3   \n",
       "26            27         0       3   \n",
       "28            29         1       3   \n",
       "29            30         0       3   \n",
       "31            32         1       1   \n",
       "32            33         1       3   \n",
       "36            37         1       3   \n",
       "42            43         0       3   \n",
       "45            46         0       3   \n",
       "46            47         0       3   \n",
       "47            48         1       3   \n",
       "48            49         0       3   \n",
       "55            56         1       1   \n",
       "64            65         0       1   \n",
       "65            66         1       3   \n",
       "76            77         0       3   \n",
       "77            78         0       3   \n",
       "82            83         1       3   \n",
       "87            88         0       3   \n",
       "95            96         0       3   \n",
       "101          102         0       3   \n",
       "107          108         1       3   \n",
       "109          110         1       3   \n",
       "121          122         0       3   \n",
       "126          127         0       3   \n",
       "128          129         1       3   \n",
       "140          141         0       3   \n",
       "154          155         0       3   \n",
       "..           ...       ...     ...   \n",
       "718          719         0       3   \n",
       "727          728         1       3   \n",
       "732          733         0       2   \n",
       "738          739         0       3   \n",
       "739          740         0       3   \n",
       "740          741         1       1   \n",
       "760          761         0       3   \n",
       "766          767         0       1   \n",
       "768          769         0       3   \n",
       "773          774         0       3   \n",
       "776          777         0       3   \n",
       "778          779         0       3   \n",
       "783          784         0       3   \n",
       "790          791         0       3   \n",
       "792          793         0       3   \n",
       "793          794         0       1   \n",
       "815          816         0       1   \n",
       "825          826         0       3   \n",
       "826          827         0       3   \n",
       "828          829         1       3   \n",
       "832          833         0       3   \n",
       "837          838         0       3   \n",
       "839          840         1       1   \n",
       "846          847         0       3   \n",
       "849          850         1       1   \n",
       "859          860         0       3   \n",
       "863          864         0       3   \n",
       "868          869         0       3   \n",
       "878          879         0       3   \n",
       "888          889         0       3   \n",
       "\n",
       "                                               Name     Sex  Age  SibSp  \\\n",
       "5                                  Moran, Mr. James    male  NaN      0   \n",
       "17                     Williams, Mr. Charles Eugene    male  NaN      0   \n",
       "19                          Masselmani, Mrs. Fatima  female  NaN      0   \n",
       "26                          Emir, Mr. Farred Chehab    male  NaN      0   \n",
       "28                    O'Dwyer, Miss. Ellen \"Nellie\"  female  NaN      0   \n",
       "29                              Todoroff, Mr. Lalio    male  NaN      0   \n",
       "31   Spencer, Mrs. William Augustus (Marie Eugenie)  female  NaN      1   \n",
       "32                         Glynn, Miss. Mary Agatha  female  NaN      0   \n",
       "36                                 Mamee, Mr. Hanna    male  NaN      0   \n",
       "42                              Kraeff, Mr. Theodor    male  NaN      0   \n",
       "45                         Rogers, Mr. William John    male  NaN      0   \n",
       "46                                Lennon, Mr. Denis    male  NaN      1   \n",
       "47                        O'Driscoll, Miss. Bridget  female  NaN      0   \n",
       "48                              Samaan, Mr. Youssef    male  NaN      2   \n",
       "55                                Woolner, Mr. Hugh    male  NaN      0   \n",
       "64                            Stewart, Mr. Albert A    male  NaN      0   \n",
       "65                         Moubarek, Master. Gerios    male  NaN      1   \n",
       "76                                Staneff, Mr. Ivan    male  NaN      0   \n",
       "77                         Moutal, Mr. Rahamin Haim    male  NaN      0   \n",
       "82                   McDermott, Miss. Brigdet Delia  female  NaN      0   \n",
       "87                    Slocovski, Mr. Selman Francis    male  NaN      0   \n",
       "95                      Shorney, Mr. Charles Joseph    male  NaN      0   \n",
       "101                Petroff, Mr. Pastcho (\"Pentcho\")    male  NaN      0   \n",
       "107                          Moss, Mr. Albert Johan    male  NaN      0   \n",
       "109                             Moran, Miss. Bertha  female  NaN      1   \n",
       "121                      Moore, Mr. Leonard Charles    male  NaN      0   \n",
       "126                             McMahon, Mr. Martin    male  NaN      0   \n",
       "128                               Peter, Miss. Anna  female  NaN      1   \n",
       "140                   Boulos, Mrs. Joseph (Sultana)  female  NaN      0   \n",
       "154                           Olsen, Mr. Ole Martin    male  NaN      0   \n",
       "..                                              ...     ...  ...    ...   \n",
       "718                             McEvoy, Mr. Michael    male  NaN      0   \n",
       "727                        Mannion, Miss. Margareth  female  NaN      0   \n",
       "732                            Knight, Mr. Robert J    male  NaN      0   \n",
       "738                              Ivanoff, Mr. Kanio    male  NaN      0   \n",
       "739                              Nankoff, Mr. Minko    male  NaN      0   \n",
       "740                     Hawksford, Mr. Walter James    male  NaN      0   \n",
       "760                              Garfirth, Mr. John    male  NaN      0   \n",
       "766                       Brewe, Dr. Arthur Jackson    male  NaN      0   \n",
       "768                             Moran, Mr. Daniel J    male  NaN      1   \n",
       "773                                 Elias, Mr. Dibo    male  NaN      0   \n",
       "776                                Tobin, Mr. Roger    male  NaN      0   \n",
       "778                         Kilgannon, Mr. Thomas J    male  NaN      0   \n",
       "783                          Johnston, Mr. Andrew G    male  NaN      1   \n",
       "790                        Keane, Mr. Andrew \"Andy\"    male  NaN      0   \n",
       "792                         Sage, Miss. Stella Anna  female  NaN      8   \n",
       "793                        Hoyt, Mr. William Fisher    male  NaN      0   \n",
       "815                                Fry, Mr. Richard    male  NaN      0   \n",
       "825                                 Flynn, Mr. John    male  NaN      0   \n",
       "826                                    Lam, Mr. Len    male  NaN      0   \n",
       "828                    McCormack, Mr. Thomas Joseph    male  NaN      0   \n",
       "832                                  Saad, Mr. Amin    male  NaN      0   \n",
       "837                             Sirota, Mr. Maurice    male  NaN      0   \n",
       "839                            Marechal, Mr. Pierre    male  NaN      0   \n",
       "846                        Sage, Mr. Douglas Bullen    male  NaN      8   \n",
       "849    Goldenberg, Mrs. Samuel L (Edwiga Grabowska)  female  NaN      1   \n",
       "859                                Razi, Mr. Raihed    male  NaN      0   \n",
       "863               Sage, Miss. Dorothy Edith \"Dolly\"  female  NaN      8   \n",
       "868                     van Melkebeke, Mr. Philemon    male  NaN      0   \n",
       "878                              Laleff, Mr. Kristo    male  NaN      0   \n",
       "888        Johnston, Miss. Catherine Helen \"Carrie\"  female  NaN      1   \n",
       "\n",
       "     Parch           Ticket      Fare  Cabin Embarked  \n",
       "5        0           330877    8.4583    NaN        Q  \n",
       "17       0           244373   13.0000    NaN        S  \n",
       "19       0             2649    7.2250    NaN        C  \n",
       "26       0             2631    7.2250    NaN        C  \n",
       "28       0           330959    7.8792    NaN        Q  \n",
       "29       0           349216    7.8958    NaN        S  \n",
       "31       0         PC 17569  146.5208    B78        C  \n",
       "32       0           335677    7.7500    NaN        Q  \n",
       "36       0             2677    7.2292    NaN        C  \n",
       "42       0           349253    7.8958    NaN        C  \n",
       "45       0  S.C./A.4. 23567    8.0500    NaN        S  \n",
       "46       0           370371   15.5000    NaN        Q  \n",
       "47       0            14311    7.7500    NaN        Q  \n",
       "48       0             2662   21.6792    NaN        C  \n",
       "55       0            19947   35.5000    C52        S  \n",
       "64       0         PC 17605   27.7208    NaN        C  \n",
       "65       1             2661   15.2458    NaN        C  \n",
       "76       0           349208    7.8958    NaN        S  \n",
       "77       0           374746    8.0500    NaN        S  \n",
       "82       0           330932    7.7875    NaN        Q  \n",
       "87       0  SOTON/OQ 392086    8.0500    NaN        S  \n",
       "95       0           374910    8.0500    NaN        S  \n",
       "101      0           349215    7.8958    NaN        S  \n",
       "107      0           312991    7.7750    NaN        S  \n",
       "109      0           371110   24.1500    NaN        Q  \n",
       "121      0        A4. 54510    8.0500    NaN        S  \n",
       "126      0           370372    7.7500    NaN        Q  \n",
       "128      1             2668   22.3583  F E69        C  \n",
       "140      2             2678   15.2458    NaN        C  \n",
       "154      0        Fa 265302    7.3125    NaN        S  \n",
       "..     ...              ...       ...    ...      ...  \n",
       "718      0            36568   15.5000    NaN        Q  \n",
       "727      0            36866    7.7375    NaN        Q  \n",
       "732      0           239855    0.0000    NaN        S  \n",
       "738      0           349201    7.8958    NaN        S  \n",
       "739      0           349218    7.8958    NaN        S  \n",
       "740      0            16988   30.0000    D45        S  \n",
       "760      0           358585   14.5000    NaN        S  \n",
       "766      0           112379   39.6000    NaN        C  \n",
       "768      0           371110   24.1500    NaN        Q  \n",
       "773      0             2674    7.2250    NaN        C  \n",
       "776      0           383121    7.7500    F38        Q  \n",
       "778      0            36865    7.7375    NaN        Q  \n",
       "783      2       W./C. 6607   23.4500    NaN        S  \n",
       "790      0            12460    7.7500    NaN        Q  \n",
       "792      2         CA. 2343   69.5500    NaN        S  \n",
       "793      0         PC 17600   30.6958    NaN        C  \n",
       "815      0           112058    0.0000   B102        S  \n",
       "825      0           368323    6.9500    NaN        Q  \n",
       "826      0             1601   56.4958    NaN        S  \n",
       "828      0           367228    7.7500    NaN        Q  \n",
       "832      0             2671    7.2292    NaN        C  \n",
       "837      0           392092    8.0500    NaN        S  \n",
       "839      0            11774   29.7000    C47        C  \n",
       "846      2         CA. 2343   69.5500    NaN        S  \n",
       "849      0            17453   89.1042    C92        C  \n",
       "859      0             2629    7.2292    NaN        C  \n",
       "863      2         CA. 2343   69.5500    NaN        S  \n",
       "868      0           345777    9.5000    NaN        S  \n",
       "878      0           349217    7.8958    NaN        S  \n",
       "888      2       W./C. 6607   23.4500    NaN        S  \n",
       "\n",
       "[177 rows x 12 columns]"
      ]
     },
     "execution_count": 14,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df[df.Age.isna()]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
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